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{"poster":"xM4XIx","date":"2016-10-16T03:43:58.191+0000","title":"Funciona el reporte por actitud negativa, al jugador que dice \"izi\"?","subforum":"Charlas Generales","up_votes":14,"down_votes":0,"body":"Hace tiempo atrás, pregunté si era reportable que algún jugador escriba "izi" en el chat, y me dijeron que si; los rioters y jugadores.\nReporto jugadores de mi equipo o equipo contrario que lo dicen.\n\nActualmente sigo viendo jugadores que siguen diciendo eso, los reporto, pero no veo funcionalidad en el reporte que hago...","replies":[{"poster":"Rıot Alma","date":"2016-10-16T16:33:22.418+0000","up_votes":12,"down_votes":0,"body":"Te dejo toda la info importante que necesites:\n#Para que reportar el \"GG IZI\" (Y sus derivados \"EZ\",\"Fácil\",\"IZIPIZI\",etc)?\n> _Cuando reportes a un jugador tenes que tener en cuenta que el \"GG IZI\" (Y sus derivados, De ahora en adelante \"IZI\") es una conducta antideportiva\nsimilar a la que se presenta en un partido de fútbol de barrio...la gente se insulta y solo algunos lo toman a mal\npero que quede claro que eso es_ **REPORTABLE!**\n_En un partido de barrio si hay un arbitro oficial (En este caso riot) las intimidaciones y conductas antideportivas son penalizadas_\nSi reportas la penalización máxima por un \"IZI\" es un bloqueo de Chat desde 3 a 20 partidas. (Valores estimados de personas baneadas entrevistadas)\n---\n\n#Cuando reportar?\n>Es muy fácil:\n- _Te ponen \"IZI\" ya sea en \"Selección de campeón\",\"In-Game\" o en el \"Lobby\" El report investiga TODOS LOS CHAT LOGS! asi que hay que **REPORTARLO SOLO COMO \"CONDUCTA ANTIDEPORTIVA**\" (¿Por que? = Porque si reportas sin fundamentos tu report pierde \"Valor\")_\n- _Te ponen en global \" I Z I \" (Letra por letra en 3 mensajes diferentes) El sistema lo analiza y penaliza (Salio una rima xD)_\n---\n\n#¿Como se si mi report funcionó?\n> _Lamentablemente **Riot solo te informa sobre 1 de cada 10 castigos sobre tus reportes** (Reportaste 20 personas, Castigan solo a 10 y te avisan de 1)\n¿**Por que no te avisan sobre cada castigo**? - Porque sino tendrías 999 carteles que \"Spamearian\" en cierta forma tu cliente_\n\n#¿Que no debo esperar del report sobre conducta antideportiva?\n>_**No esperes un PERMABAN** del juego (Como mencione antes poner \"IZI\" y sus derivados es una conducta de ultima categoria a banear en la lista)\n¿Que lista?\nRiot debe tener una lista de prioridades a penalizar y el orden de mayor a menor sería:_\n- **Xenofobia Extrema**\n- **Abuso verbal Extremo**\n- **Trolls**\n- **Cheaters** (_Este escala dependiendo de los cheats que aparecen_)\n- **AFKS**\n- **\"GG IZI's\"**\n---\n\n#Espero haberte sido de ayuda y ante cualquier duda mi Facebook es este: [Click Aqui](http://www.facebook.com/Kamusvalenzuela)\n#Te saluda\n#ALMAPIRATA\n{{sticker:slayer-jinx-catface}}","replies":[]},{"poster":"Cabo xD","date":"2016-10-16T03:49:11.808+0000","up_votes":9,"down_votes":1,"body":"somos 2 que piensan igual","replies":[]},{"poster":"Zoliza","date":"2016-10-16T04:05:48.312+0000","up_votes":4,"down_votes":0,"body":"Escribir izi en el chat no indica nada y por lo general los que dicen izi son los que les rompen el culo, ganen o pierdan. Si te dicen gg izi cuando te ganan podes reportarlo, pero salvo que lo reporten todas las partidas por lo mismo no le va a pasar nada.","replies":[]},{"poster":"Esguein","date":"2016-10-16T09:22:11.245+0000","up_votes":3,"down_votes":0,"body":"Definitivamente si, yo habia reportado a uno por decir izi, y enseguida me salio el cartel. Se ve que habra dicho izi en muchas partidas.","replies":[]},{"poster":"EpicHit","date":"2016-10-16T04:15:57.837+0000","up_votes":2,"down_votes":18,"body":"Creo que \"izi\" no es reportable, pero si el \"GG izi\"","replies":[{"poster":"martincarp","date":"2016-10-16T04:47:22.701+0000","up_votes":6,"down_votes":0,"body":"> [{quoted}](name=EpicHit,realm=LAS,application-id=v7qsfXsE,discussion-id=0F7IE7uR,comment-id=0005,timestamp=2016-10-16T04:15:57.837+0000)\n>\n> Creo que "izi" no es reportable, pero si el "GG izi"\n\nEs lo mismo si va acompañado de un GG o no, el sistema detecta las palabras individualmente, así que le da igual si está el buen juego o no.\n\nCon respecto al tema, decir izi es totalmente reportable, el tema es que no muchos reportan por esa causa, y si el jugador no es muy negativo más allá de esa mala costumbre, no recibe la atención del sistema de castigos, por lo que se sale con las suyas. Pero como dije, quédate tranquilo que si lo hacen en todas las partidas y reciben sus merecidos reportes, el sistema tomará dichos reportes y detecta \"izi\" como palabra inapropiada, por lo que los manda a llorar al foro sin asco.","replies":[{"poster":"EpicHit","date":"2016-10-16T04:51:27.237+0000","up_votes":3,"down_votes":0,"body":"Gracias por la info","replies":[]}]}]},{"poster":"ˇ Ai Mêi ˇ","date":"2016-10-17T01:32:20.134+0000","up_votes":2,"down_votes":0,"body":"la verdad que si funciona porque izi es molesto y sicnifia \"gane la linea con mala cara\" y los tipos lo dicen como si nada","replies":[]},{"poster":"LGBT Valentina","date":"2016-10-16T19:37:44.398+0000","up_votes":2,"down_votes":0,"body":"Te voy a ser sincero, tuve un periodo de tiempo donde nadie escribia en el chat y solo veia los gg izi\nPersonalmente, puedo afirmar que funciona el report de gg izi. Pero este varia\n\nCuando digo varia me refiero a que si la persona, esta todo el dia jugando y escribiendo gg izi al final, quedate tranquilo que es pollo\nPero la mayoria de los gg izi, son muy particulares\n\nEs como que te diga:\nYo en una partida, te insulto de forma considerable (no mucho, pero a consideracion). Pero si me pasa 1 vez cada 20-30 partidas y bue, aparte tampoco me sarpe y tampoco se deja de lado\n\nEs lo mismo con el gg izi\nLo que tiene el gg izi a \"favor\" es que normalmente lo dice el que gana y los que ganan, no reportan a ese jugador. En cambio si flamea es probable que por parte de los 2 team se coma report\n\n\nPersonalmente, la sancion del gg izi deberia ser un poco mas grave. Aparte tenes que entender que en tu propio chat tambien escribis izi aveces\nEj: Voy top, viene el jg y saco doble kill\nyo pongo gg izi EN MI CHAT, no en el del enemigo. Es la misma historia? Si, pero escrita en otro papel que algunos no van a leer","replies":[]},{"poster":"sonof666","date":"2016-10-16T09:21:05.641+0000","up_votes":3,"down_votes":1,"body":"He reportado a cientos de jugadores por esto, y NO HE VISTO QUE HAYAN BANEADO o al menos sancionado de cualquier otra forma SIQUIERA A UNO. Parece que los reportes están de adorno.","replies":[{"poster":"Benja God","date":"2016-10-16T17:08:43.713+0000","up_votes":2,"down_votes":0,"body":"Sabes que no siempre te salen los carteles de los baneos que hiciste?","replies":[{"poster":"sonof666","date":"2016-10-17T17:17:52.514+0000","up_votes":1,"down_votes":0,"body":"En mi caso nunca me han aparecido.","replies":[]}]}]},{"poster":"Benja God","date":"2016-10-16T17:06:03.149+0000","up_votes":2,"down_votes":0,"body":"Pero es que ten en cuenta todos los jugadores que dicen eso (que son la mayoría de LAS)","replies":[]},{"poster":"SrAngusht","date":"2016-10-16T15:50:57.918+0000","up_votes":2,"down_votes":0,"body":"Bueno, yo siempre reporto gente que dice \"izi\" ya sean de mi equipo o no, nunca me ha saltado el cartel, pero siempre hay esperanza.","replies":[]},{"poster":"Chase me","date":"2016-10-16T04:07:14.697+0000","up_votes":2,"down_votes":0,"body":"Mira, muy poca gente tiene la idea de \"dijó izi en forma ofensiva, report\", por ende, mas o menos....aproximadamente, 2 personas a lo mas le daran report por tal acto, pero para que se le sea baneado tienen que haber mas de 2 reports obviamente, no sé cual es la cantidad especifica, pero en una partida un tipo era muy toxico-troll-feeder, ambos equipos lo reportamos y a todos nos llegó un mensaje de que aquel señor fue baneado. Asi que si quieres dejar baneado a aquellos chicuelos :I tendras que conseguir mas gente que apoye tu idea :p","replies":[]},{"poster":"Sir Sendo","date":"2016-10-16T03:59:12.049+0000","up_votes":2,"down_votes":1,"body":"no creo que funcione pero bue a seguir reportando jajaj xD","replies":[]},{"poster":"Sonya Kyron","date":"2016-10-16T04:07:53.461+0000","up_votes":4,"down_votes":5,"body":"Si funciona, pero lo tienen que reportar varios jugadores, o debe acumular varios reportes de diferentes partidas por jugadores que se sintieran ofendidos.\nYo ya logre varios ban de chat y de cuenta por esa palabra.","replies":[]},{"poster":"Kanan","date":"2016-10-16T23:19:07.777+0000","up_votes":1,"down_votes":5,"body":"pff izi","replies":[]},{"poster":"Telazzampo","date":"2016-10-16T07:48:18.361+0000","up_votes":1,"down_votes":18,"body":"Que sensible que sos no podes reportar algo asi","replies":[]}]} |
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{
"author": "d0lfCr547",
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"title": "ЛАСКАВА ГОСПОДИНЯ",
"link": "/metrs_poem.php?poem=16441",
"html": "\n<h4></h4>\n\n<a href=\"/metrs.php?id=150&type=tvorch\" class=\"redhr1\">Творчість</a> |\n<a href=\"/metrs.php?id=150&type=biogr\" class=\"redhr1\">Біографія</a> |\n<a href=\"/metrs.php?id=150&type=critiques\" class=\"redhr1\">Критика</a>\n\n<h4>ЛАСКАВА ГОСПОДИНЯ</h4>\n<!--<div style=\"float:right;margin-left: 10px\">\n\t<script async src=\"//pagead2.googlesyndication.com/pagead/js/adsbygoogle.js\"></script>\n\n\t<ins class=\"adsbygoogle\"\n\t\t style=\"display:inline-block;width:250px;height:400px\"\n\t\t data-ad-client=\"ca-pub-5357335372099528\"\n\t\t data-ad-slot=\"7581761695\"></ins>\n\t<script>\n\t(adsbygoogle = window.adsbygoogle || []).push({});\n\t</script>\n</div>-->\n\nЗайшов якось до знайомих тенор знаменитий. <br>\nСтала його господиня ласкаво просити: <br>\n— Заспівайте нам що-небудь з \"Кармен\" чи з \"Аїди\"! <br>\n— Та вже ж пізно, — мнеться тенор, — мабуть, сплять сусіди. <br>\n— І-і-і, — сказала господиня, — зайва про це мова. <br>\nВ них собака всю ніч виє, а ми їм — ні слова. <br>\n<br>\n<br><br><em>1989.</em>\n\n\n<br><br>\n"
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{"Plot": "\"Double Down\" is a neo-noir, domestic psychological thriller, in which a failing, morally compromised bond trader \"Vincent\" is so desperate to live up to his notion of manhood that he is ...", "Rated": "N/A", "Response": "True", "Language": "English", "Title": "Double Down", "Country": "USA", "Writer": "Sterling Macer Jr.", "Metascore": "N/A", "imdbRating": "N/A", "Director": "Sterling Macer Jr.", "Released": "12 Dec 2015", "Actors": "Jenna Willis, Shashawnee Hall, Sterling Macer Jr., Jaimi Paige", "Year": "2015", "Genre": "Drama", "Awards": "N/A", "Runtime": "N/A", "Type": "movie", "Poster": "N/A", "imdbVotes": "N/A", "imdbID": "tt4873098"} |
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"text": "2318 Rapid Response Team are now dealing with the fallen tree which affected Light Rail services near Melody Garden",
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{"Reviews": [{"Author": "Chris D.", "ReviewID": "TCCGWdNK79ydWAREXy-Rmg", "Overall": "5.0", "Content": "(3/12/14) I had a great Italian sub today. It was superbly crafted by Mandy. It was delicious hot but I could only eat half of it. So I took the other half home in a container. I ate it for lunch the next day and surprisingly it tasted even better cold.(3/14/14)Fast forward to today. I'm having another Italian sub jointly crafted by Mike Shingle & Greg Gimon. As usual it was very well made and delicious. \u00a0(03/15/14) Mike and Greg are working second shift again today. What to have what to have... I again decided on an Italian sub. It was good to see Matt back behind the counter. He really makes customers feel welcome. The sub as usual was very tasty and prepared just right. Nice work guys!", "Date": "2014-03-16", "Author_Location": "Charlotte, NC"}, {"Author": "Lindsay H.", "ReviewID": "yN9RVKpBOIAVPMqIZfAG5Q", "Overall": "5.0", "Content": "Love this place...we go there at least once a week and the staff is super friendly...they remember what my favorite sub is every time I go in...i def recommend that you treat yourself to a fantastic sub at this fantastic place", "Date": "2014-05-29", "Author_Location": "Charlotte, NC"}, {"Author": "Amy C.", "ReviewID": "XQ5RLb0XlegUMzV8jVKuWg", "Overall": "4.0", "Content": "I am a big fan of the Firehouse chain. \u00a0I am a whore for corned beef, and most that I have had from the various locations is tender and not stringy.Located at the corner of South Blvd and Woodlawn, in the same shopping center as Home Depot, be on the lookout for this small shop or you may pass it. My NY Steamer (corned beef and pastrami with cheese, mayo, mustard and italian dressing) hit the spot. \u00a0Eaten with their Cherry Limeade and a bag of the new Ruffles Ultimate Sweet & Smoky chips, I enjoyed my meal. \u00a0I also purchased a limited run S'mores brownie. \u00a0It was okay, though dense and a little dry. Firehouse costs a bit more than their sub competitors, and take a bit longer to receive, but it is a delicious change from boring. \u00a0Their hot subs are tender and juicy, served hot and delicious. \u00a0Firehouse also has online ordering now for various locations, including this one - so if you are in a rush, or need a big order, utilize the Online Ordering via their website. \u00a0 Good stuff, I have been coming here for years and will definitely return.", "Date": "2013-12-13", "Author_Location": "Charlotte, NC"}, {"Author": "Coco B.", "ReviewID": "6R2BSoXljWSnSGHwm5qC9A", "Overall": "2.0", "Content": "My sandwich was soggy my lettuce was scarce and it was shredded so thin it just made everything wet! a foot long with three thin tomato slices yuckthe pastrami was seasoned well but the bread was so gross that all i ate out of the sandwich was the meat and onions?just a waste basically", "Date": "2013-09-24", "Author_Location": "Spring Valley, CA"}, {"Author": "Emiliano C.", "ReviewID": "nKhMWbkqvveluIRqx-x4EQ", "Overall": "2.0", "Content": "I had the brisket sandwich. It was good. I ordered a combo which was 10$. I paid for 3 people and it was 32$. The food is alright. You can go to Harris teeter and get a footling sub anyway you want for 5$. Never going to firehouse again.", "Date": "2013-12-25", "Author_Location": "Starmount, Charlotte, NC"}, {"Author": "Chris B.", "ReviewID": "ymKRP_lNweKTDUv0uulW2Q", "Overall": "4.0", "Content": "This place has the old firehouse theme nice and clean. Very friendly staff seem to live what they are doing. I got the hook and ladder. I forgot they put mayo on it I hate mayo. But I scraped it off and added mustard and hot sauce. It was quite good. I will be back here. I recommend checking this place out.", "Date": "2014-02-13", "Author_Location": "Smyrna, GA"}, {"Author": "Bruce K.", "ReviewID": "QYMABVKEWw88qYt99uFzOw", "Overall": "3.0", "Content": "Really delicious subs - way better than anything you would get at Subway and better than Quizno's too! Firehouse offers a couple of different meats that you won't see at the other sub places - corned beef brisket and pastrami - so avoid the usual ham and cheese. Firehouse also does things a little differently than Quizno's - they steam the meat and cheese first.Taking the order to go, I got the \"Hook & Ladder\" for myself (ham and turkey with Monterrey Jack cheese) and the \"Engineer\" (smoked turkey and sauteed mushrooms) for my wife. Both were what they call \"fully involved\" which means, as you can guess, with all the usual toppings.While the staff was friendly and the sandwiches were excellent, by the time I had driven them five minutes to get home, they had become a little soggy. I'm sure that it is the steamer that does it. No biggie - have it \"eat in\" rather than \"to go.\"Try something different!", "Date": "2009-05-24", "Author_Location": "Charlotte, NC"}, {"Author": "Jason L.", "ReviewID": "gwl78rN1L0APbrXjpnjsKw", "Overall": "4.0", "Content": "The bread is awesome and they have baked Lay's potato chips which I haven't seen in a long time. \u00a0Plus they have the super powerful salt & vinegar chips which I like when I need a punch of flavor. \u00a0So far I've only tried the standard ham and turkey but it was so good I'll be back for more. \u00a0Can't wait to try the club or Italian on the next visit. 8 bucks for a combo is higher than Subway but on par with Jimmy John's, and a lot less fuss than Quizno's.", "Date": "2009-07-19", "Author_Location": "Charlotte, NC"}, {"Author": "James L.", "ReviewID": "JlRkgnfS7H42LGwgfRYt7g", "Overall": "2.0", "Content": "Over priced, low quality food.I will not be visiting a Firehouse Subs location again as long as there is a Subway or Quizno's close by.Frankly, I'd rather get something from the grocery store deli counter.", "Date": "2011-07-05", "Author_Location": "Chamblee, GA"}, {"Author": "Jeff S.", "ReviewID": "JciyDXGKeGnXeFHpKHIEGA", "Overall": "4.0", "Content": "The subs here are wonderful. \u00a0Full of flavor and just plain FULL. \u00a0Unlike some other sub places that put a couple slices of meat and a cheese on a roll, Firehouse stuffs their sandwiches. \u00a0They also steam their meats which is an added touch. \u00a0The rolls come out soft and chewy. \u00a0This location gets busy for lunch so be prepared to wait to order. \u00a0Also they have one of those new computerized coke dispensers so be prepared to wait for that as well. \u00a0If you're an newbie to these machines, it may take a minute or two to figure out what to do. \u00a0But you get the hang of it.This is probably one of the 3 better sub chains in my opinion.", "Date": "2011-11-04", "Author_Location": "Charlotte, NC"}, {"Author": "Garrett G.", "ReviewID": "r3qQqOHNnPJHabEYABroGg", "Overall": "4.0", "Content": "Kicks Subway in the butt, the subs here taste so fresh and the bread is always fresh out of the oven. \u00a0My favorite part about the place is the hot sauce selection. \u00a0I am a sucker for hot sauce, and they carry about thirty different brands. \u00a0It gets pretty crowded here around lunch time, so I would hit it up during the less hectic hours. \u00a0Their vegetarian sub is delicious. \u00a0I have heard that there BLT sub is pretty money as well. \u00a0They don't get enough recognition, but they sure do deserve it.", "Date": "2008-09-17", "Author_Location": "Charlotte, NC"}, {"Author": "MsJenita M.", "ReviewID": "Vjwz-cV-WGYtUZiboNDmrw", "Overall": "5.0", "Content": "Friendly service! Excellent Subs!!12pm visit on a SaturdayFood trays delivered once ready. The staff check on you to see if everything is okay with your meals. Military was out for lunch. I had no idea a base was nearby but there was no line when we arrived. A staff member was nice enough to help me choose a good sub based on my preferred taste in delimeats. These are more hearty than subway. Fresh and light bread. No heavy or bulgy feeling after eating. Nutritional information on the company's website. Clean restroom.", "Date": "2012-04-16", "Author_Location": "Lumberton, NC"}, {"Author": "Arar A.", "ReviewID": "9G-z0nEnm-NDc9EStVCEqg", "Overall": "3.0", "Content": "Sub was ok, not as good as quiznos, but the old bald guy could not get an order right!! Messed up twice so I just took the sub, then heard a lady complain about tomatoes right after........so, check it out if you want, but Quiznos is better, IMHO.", "Date": "2013-03-16", "Author_Location": "Charlotte, NC"}, {"Author": "Matt H.", "ReviewID": "tUv9hwca74HwTp2y76Swrw", "Overall": "5.0", "Content": "The hot sauces add that extra KICK that differentiates Firehouse Subs from the other subs. \u00a0Sure they have great meats and the bread is fresh, but the different sauces allow you to dress up the sandwich in different combinations to prevent the inevitable food boredom.My favorite is Gator Hammock... Garlicky mouth-watering goodness.", "Date": "2011-07-27", "Author_Location": "Charlotte, NC"}, {"Author": "Nicole O.", "ReviewID": "INIl_GaEnXOX_iq4JXH7OQ", "Overall": "4.0", "Content": "Absolutely love this place. I think it's great that every time you walk in the door everyone on the staff greets you with a \"Welcome to Firehouse!\"I always get the Club on a Sub, fully involved except for mustard and love how it melts in my mouth when I eat it. Plus you get a pickles on the side with every sandwich and they are always crisp and delicious.", "Date": "2011-01-07", "Author_Location": "Charlotte, NC"}, {"Author": "Frankie S.", "ReviewID": "rellJw8yWODFC2Hlw9P9BA", "Overall": "3.0", "Content": "Everything about this locations is \"okay.\" \u00a0The food is good, its usually noisy (especially at lunch), and your food is ready in a timely manner. \u00a0The seating is a little strange, just because it is so small inside and the line can get a bit long at times. I've had some great sandwiches and these are just okay, everything about this experience was just, okay.", "Date": "2012-11-16", "Author_Location": "Dallas, TX"}, {"Author": "Shauna C.", "ReviewID": "UP9MZS-L3xrRqXLwvvKsGQ", "Overall": "4.0", "Content": "It's the Moe's of subs ! They all say welcome to Firehouse when you walk-in, I was there probably a total of 5 minutes and heard it approximately 12 times,it was entertaining really. I went with the Italian which was about $6 for the sandwich sans combo. I thought it was MUCH better than Subway and really enjoyed that it was steamed and not-skimpy ingredient-wise. I will say next time I will go light on italian dressing as I did mayo since it was a bit borderline soggy by the time I was ready to eat (my fault). Overall I'd go back again as it had a lot of flavor for a chain sub-shop.", "Date": "2011-11-17", "Author_Location": "Charlotte, NC"}], "RestaurantInfo": {"RestaurantID": "iJWj0XTxbaUC_TCu0bBI6g", "Name": "Firehouse Subs", "Price": "$", "RestaurantURL": "/biz/firehouse-subs-charlotte", "Longitude": " -80.87782099999999", "Address": "4732 South Blvd.Charlotte, NC 28217", "Latitude": " 35.175634000000002", "ImgURL": "//s3-media3.fl.yelpcdn.com/bphoto/Zvpkl0UABRJdGGg48gVGIA/90s.jpg"}} |
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Robt. ___", "answer": "ELEE", "row": 8, "col": 11}, "43": {"clue": "Santa ___", "answer": "ANA", "row": 9, "col": 0}, "46": {"clue": "Soup with sushi", "answer": "MISO", "row": 9, "col": 4}, "47": {"clue": "Prosper", "answer": "DOWELL", "row": 9, "col": 9}, "49": {"clue": "Burner inventor", "answer": "BUNSEN", "row": 10, "col": 0}, "51": {"clue": "Proof ender", "answer": "QED", "row": 10, "col": 8}, "52": {"clue": "\"Where ___?\"", "answer": "AMI", "row": 10, "col": 12}, "53": {"clue": "Where parents pull over to yell at their kids?", "answer": "SCOLDSHOULDER", "row": 11, "col": 0}, "57": {"clue": "Miscellany", "answer": "OLIO", "row": 12, "col": 0}, "58": {"clue": "Reid of \"American Pie\"", "answer": "TARA", "row": 12, "col": 5}, "59": {"clue": "Stand out", "answer": "EXCEL", "row": 12, "col": 10}, "62": {"clue": "It's overhead", "answer": "RENT", "row": 13, "col": 0}, "63": {"clue": "Not the most direct routes from point to point", "answer": "ARCS", "row": 13, "col": 5}, "64": {"clue": "Boot add-ons", "answer": "SPURS", "row": 13, "col": 10}, "65": {"clue": "Two ___", "answer": "BITS", "row": 14, "col": 0}, "66": {"clue": "\"I guess that's true\"", "answer": "YEAH", "row": 14, "col": 5}, "67": {"clue": "Took along", "answer": "TOTED", "row": 14, "col": 10}}, "down": {"1": {"clue": "British car, for short", "answer": "JAG", "row": 0, "col": 0}, "2": {"clue": "What rings may signify", "answer": "AGE", "row": 0, "col": 1}, "3": {"clue": "Something terrific, with \"the\"", "answer": "CATSMEOW", "row": 0, "col": 2}, "4": {"clue": "Kin's partner", "answer": "KITH", "row": 0, "col": 3}, "5": {"clue": "Clock-radio button", "answer": "SNOOZE", "row": 0, "col": 4}, "6": {"clue": "What \"bi-\" means", "answer": "TWICE", "row": 0, "col": 6}, "7": {"clue": "\"This means trouble!\"", "answer": "UHOH", "row": 0, "col": 7}, "8": {"clue": "Head for", "answer": "GOTO", "row": 0, "col": 8}, "9": {"clue": "Squarely", "answer": "SMACKDAB", "row": 0, "col": 9}, "10": {"clue": "Sometimes-dangerous strain", "answer": "ECOLI", "row": 0, "col": 11}, "11": {"clue": "Band rehearsal spot", "answer": "GARAGE", "row": 0, "col": 12}, "12": {"clue": "Shrug-of-the-shoulders feeling", "answer": "APATHY", "row": 0, "col": 13}, "13": {"clue": "PC key", "answer": "DELETE", "row": 0, "col": 14}, "21": {"clue": "Clue hunter, informally", "answer": "TEC", "row": 3, "col": 5}, "22": {"clue": "In reserve", "answer": "ONICE", "row": 3, "col": 10}, "23": {"clue": "Diner cupful", "answer": "JOE", "row": 4, "col": 0}, "24": {"clue": "Hill group", "answer": "ANTS", "row": 4, "col": 1}, "28": {"clue": "Succumb to stress", "answer": "SNAP", "row": 5, "col": 3}, "29": {"clue": "\"Yippee!\"", "answer": "WAHOO", "row": 5, "col": 7}, "30": {"clue": "Mars counterpart", "answer": "ARES", "row": 5, "col": 8}, "33": {"clue": "Range units: Abbr.", "answer": "MTNS", "row": 6, "col": 6}, "34": {"clue": "Freshly", "answer": "ANEW", "row": 6, "col": 11}, "36": {"clue": "Frost-covered", "answer": "RIMED", "row": 7, "col": 4}, "37": {"clue": "Bread and butter, so to speak", "answer": "MAINSTAY", "row": 7, "col": 5}, "38": {"clue": "Plain as day", "answer": "CLEARCUT", "row": 7, "col": 12}, "39": {"clue": "Control spot", "answer": "HELM", "row": 7, "col": 13}, "42": {"clue": "Big Red opponent", "answer": "ELI", "row": 8, "col": 14}, "43": {"clue": "Take in", "answer": "ABSORB", "row": 9, "col": 0}, "44": {"clue": "Protons' places", "answer": "NUCLEI", "row": 9, "col": 1}, "45": {"clue": "Sprinkle with oil", "answer": "ANOINT", "row": 9, "col": 2}, "47": {"clue": "___ Sarto (Italian painter)", "answer": "DEL", "row": 9, "col": 9}, "48": {"clue": "Most Ripleyesque", "answer": "ODDEST", "row": 9, "col": 10}, "50": {"clue": "Reno lineup", "answer": "SLOTS", "row": 10, "col": 3}, "51": {"clue": "Sit on", "answer": "QUASH", "row": 10, "col": 8}, "54": {"clue": "Fabled racer", "answer": "HARE", "row": 11, "col": 6}, "55": {"clue": "Ocean predator", "answer": "ORCA", "row": 11, "col": 7}, "56": {"clue": "Big show", "answer": "EXPO", "row": 11, "col": 11}, "60": {"clue": "Poetic palindrome", "answer": "ERE", "row": 12, "col": 13}, "61": {"clue": "Tripper's buy", "answer": "LSD", "row": 12, "col": 14}}} |
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{
"forum_title": "Sjónvörp, hljóðkerfi og snjalllausnir fyrir heimilið",
"id": "71253",
"title": "Android TV Box",
"url": "https://spjall.vaktin.is/viewtopic.php?f=47&t=71253",
"posts": [
{
"user_name": "Selith",
"text": "Daginn, \nMeð hvaða android tv boxi mælið þið með ?\nHef verið að skoða nokkur á mismunandi verðum en veit bara ekki hvað ég á að kaupa.",
"date": "2016-11-15 17:39:00",
"post_id": "636841",
"reply_to_id": false
},
{
"user_name": "Alfa",
"text": "Fyrir peninginn er Beelink i68 fínt, bara veldu með 2gb minni en ekki 1gb, ef þú flytur það inn sjálfur er það undir 10 þús kalli.",
"date": "2016-11-15 20:06:00",
"post_id": "636853",
"reply_to_id": "636841"
},
{
"user_name": "Viggi",
"text": "Fékk mér þetta og er mjög sáttur\nfound a very interesting good in Gearbest:Mini M8S TV Box \nhttp://m.gearbest.com/tv-box-mini-pc/pp_334005.html",
"date": "2016-11-15 20:24:00",
"post_id": "636854",
"reply_to_id": "636853"
},
{
"user_name": "zurien",
"text": "Ég er með nýrri útgafuna af þessu boxi, A95X (android 6.0.1).\nhttp://www.banggood.com/Nexbox-A95X-4K- ... 67181.html\nVirkar mjög vel, fyrir utan eitt í Plex, ef skrárnar sem ég ætla að spila eru með AC3 hljóði þá spilar plex clientinn ekki hljóðið, AC, AC2 & allt annað sem ég hef prufað á þessu virkar fínt.\nAllt virkar í kodi, netflix virkar vel, nema fjarstýringin sem fylgir er ekki hentug fyrir netflix.",
"date": "2016-11-16 07:55:00",
"post_id": "636873",
"reply_to_id": "636854"
},
{
"user_name": "emmi",
"text": "Amlogic S912 er það nýjasta sem ég mæli eindregið með.",
"date": "2016-11-16 08:28:00",
"post_id": "636874",
"reply_to_id": "636873"
},
{
"user_name": "russi",
"text": "Stillir Client á að hann skilji ekki AC3 og þá transkóðar PMS hljóðið fyrir þig",
"date": "2016-11-16 13:40:00",
"post_id": "636896",
"reply_to_id": "636874"
},
{
"user_name": "dedd10",
"text": "Er eitthvað vit í þessum? Kostir og gallar? Hvort er betra eða er lítill munur kannski?\nhttp://www.oreind.is/product/android-be ... ini-mxiii/\nhttp://www.oreind.is/product/android-beelink-gt-1/",
"date": "2016-11-17 12:21:00",
"post_id": "636953",
"reply_to_id": "636896"
},
{
"user_name": "emmi",
"text": "Í fljótu bragði dýrari græjan: Nýrri cpu/chipset (Amlogic S912) og Android 6.0.\nhttp://www.cnx-software.com/2016/09/19/ ... omparison/",
"date": "2016-11-17 13:17:00",
"post_id": "636954",
"reply_to_id": "636953"
},
{
"user_name": "Alfa",
"text": "+ Hraða wifi ef þú ætlar að nota það.\n+ 8 core vs 4 core\nog svo það sem emmi segir.",
"date": "2016-11-17 13:43:00",
"post_id": "636961",
"reply_to_id": "636954"
},
{
"user_name": "dedd10",
"text": "Er ekkert hægt að uppfæra android kerfið? En er 6,0 nýjasta?\nEr hægt að installa öllum öppum úr PLAY store á dýrasta tækið ?",
"date": "2016-11-17 21:45:00",
"post_id": "636995",
"reply_to_id": "636961"
},
{
"user_name": "Viggi",
"text": "Er með 5.0.1 á mínu boxi og ekkert vesen af neinum media öppunum",
"date": "2016-11-17 21:49:00",
"post_id": "636997",
"reply_to_id": "636995"
},
{
"user_name": "Alfa",
"text": "+1 á 5.0.1 no problem !",
"date": "2016-11-17 21:56:00",
"post_id": "637000",
"reply_to_id": "636997"
},
{
"user_name": "dedd10",
"text": "Svoleiðis að 6.0 ætti ekki að vera vandamál? Er með eitt box hérna með 4.4 held ég og 1gb minni og það er endalaust vesen á þessu oft á tíðum og oft þurft að fara krókaleiðir til að setja inn opp",
"date": "2016-11-17 22:13:00",
"post_id": "637003",
"reply_to_id": "637000"
},
{
"user_name": "Molfo",
"text": "Hvernig er með tolla ef að maður flytur svona græju inn sjálfur?\nSpyr sá sem ekki veit..\nKv.\nMolfo",
"date": "2016-11-17 23:19:00",
"post_id": "637009",
"reply_to_id": "637003"
},
{
"user_name": "dedd10",
"text": "Held þú borgir bara vsk, 24%.",
"date": "2016-11-18 00:03:00",
"post_id": "637013",
"reply_to_id": "637009"
},
{
"user_name": "Alfa",
"text": "24.5% to be exact af vöru og sendingu (ef það er einhver)",
"date": "2016-11-18 01:29:00",
"post_id": "637014",
"reply_to_id": "637013"
},
{
"user_name": "Selith",
"text": "Ég fann boxið sem að Emmi mældi með á einhverri kínverskri síðu. það er dýrara boxið hjá öreind.\nVerð með tolli og sendingargjaldi var í kringum 11þús minnir mig.\nEn sú síða fær ekki góð reviews frá kaupendum.\nHeld ég skelli mér bara á dýraraboxið hjá Öreind.\nFrekar borga ég aðeins meira og fæ ábyrgð og 100% að fá tækið í hendurnar.",
"date": "2016-11-18 12:21:00",
"post_id": "637029",
"reply_to_id": "637014"
},
{
"user_name": "Halli25",
"text": "24% VSk núna BB með'etta!",
"date": "2016-11-18 13:15:00",
"post_id": "637040",
"reply_to_id": "637029"
},
{
"user_name": "russi",
"text": "Kostur, færð 2ára ábyrgð hjá Öreind, líka álagning á þessu hjá þeim er nokkuð sanngjörn, var það ekki hér fyrst.\nÉg hef pantað slatta af boxum og ekkert klikkar, þeas ef þú villt spara þér pening. Í eitt skipti kom upp ruglingur, var þá reyndar ekki að panta box, en það var leyst úr því á faglegan hátt.\nHvaða kína síðu ert þú að miða þig við?\nSú sem ég nota er Gearbest og mín reynsla er sú að það er óhætt að mæla með þeim.",
"date": "2016-11-18 14:51:00",
"post_id": "637049",
"reply_to_id": "637040"
},
{
"user_name": "worghal",
"text": "Ef að sendingin var frí þá skella þeir bara auka 10% á heildar verðið og rukka svo vaskinn af heildinni.",
"date": "2016-11-18 16:06:00",
"post_id": "637051",
"reply_to_id": "637049"
},
{
"user_name": "kassi",
"text": "Hvernig lýst mönnum á svona monster box kemur með linux hægt að setja Android og windows?\nhttp://www.geekbuying.com/item/VORKE-V2 ... 73609.html",
"date": "2016-11-18 16:09:00",
"post_id": "637052",
"reply_to_id": "637051"
},
{
"user_name": "Molfo",
"text": "Takk fyrir infoið..\nÉg skellti mér á þessa græju: \nhttp://www.gearbest.com/tv-box-mini-pc/pp_416057.html\nEr einhver hérna sem á svona?\nKv.\nMolfo",
"date": "2016-11-18 18:11:00",
"post_id": "637058",
"reply_to_id": "637052"
},
{
"user_name": "Hargo",
"text": "Jebb er með svona Beelink box. Mjög ánægður með það. Fékk mér reyndar aðeins betri fjarstýringu en fylgdi með, fékk mér AirFly USB remote sem er með lyklaborði líka.",
"date": "2016-11-18 23:27:00",
"post_id": "637080",
"reply_to_id": "637058"
},
{
"user_name": "Molfo",
"text": "#Hargo\nHvar keyptir þú þessa fjarstýringu?\nÁttu link?\nKv.\nMolfo",
"date": "2016-11-18 23:39:00",
"post_id": "637081",
"reply_to_id": "637080"
},
{
"user_name": "russi",
"text": "Það er slatti af AirMouse fjarstýringum í boði á þessari síðu, ég pantaði fyrir mistök, sem þú getur fengið ef þú vilt, en hún er þó ekki með lyklaborði.\nSendir mér bara PM.\nhttp://www.gearbest.com/mice-keyboards/ ... tml?wid=21\nPantaði þessa og er nokkuð sáttur með hana, lítil og nett og með lyklaborði\nhttp://www.gearbest.com/mice-keyboards/ ... tml?wid=21\nVar að nota þessa sem margir eru hrifnir af, fannst hún bara ekki nógu falleg og of stór, en hún var þó snilld\nhttp://www.gearbest.com/mice-keyboards/pp_68068.html",
"date": "2016-11-18 23:57:00",
"post_id": "637083",
"reply_to_id": "637081"
},
{
"user_name": "Hargo",
"text": "Keypti þessa hér sem er hægt að velja með boxinu:\nhttps://www.aliexpress.com/item/Beelink-GT1-Android-6-0-TV-Box-4K-VP9-10-2G-16G-Amlogic-S912-Octa-Core/32716573510.html?spm=2114.13010608.0.0.knvENy",
"date": "2016-11-19 12:50:00",
"post_id": "637111",
"reply_to_id": false
},
{
"user_name": "machinefart",
"text": "Þetta beelink box af gearbest togar mikið í mig, ég er pínulítið brenndur af xtreamer wonder græju sem ég var með hérna, hún var svona klassískt budget android tæki af minni reynslu. Virkaði allt í lagi í byrjun og varð svo bara lélegri og lélegri þegar maður fór að actually nota hana, það var líka léleg drægni á fjarstýringunum sem ég prófaði, ég endaði með logitech lyklaborð og mús (sambyggt með trackpad þeas) sem virkaði líka illa með android (bara músin hegðaði sér illa, scrolling var þroskaheft) og leiðinlegt að vera með það í stofunni.\nHvernig er fílingurinn að nota þetta tæki, þið sem eruð með, er þetta snappy og stöðugt og bara að performa vel? Hlutir sem hafa pirrað mig eru t.d. bara hversu mikið lengur ég er að komast í það sem ég vil gera í svona boxi m.v. t.d. apple TV sem ég hef prufað annarstaðar. Ég er með stöð 2 og afruglara hjá vodafone sem ég gjörsamlega hata, ég er að horfa á apple tv 4 hýrum augum til að losa mig við afruglarann og fara bara í 365 appið í staðinn. Ég sé ekki tilganginn í að borga fyrir afruglara sem er leiðinlegur í notkun og gefur mér ekki einu sinni aðgang að allri þeirri þjónustu sem ég er að kaupa (maraþon now er ekki í vodafone afruglurum). Haldiði að svona box eigi í apple TV í notenda upplifun?\nÉg er hikandi við apple TV 4 einfaldlega vegna þess það er ekki að gefa mér nógu mikið umfram bara 365 appið, t.d. er ekkert official twitch app og almennt bara frekar slappt úrval - ég sé þessa græju ekki gefa mér aðgang að neinu sem ég hef ekki nú þegar (er með chromecast og 2015 samsung snjall sjónvarp - þannig ég er með 4k netflix í sjónvarpinu t.d. sem virkar fáránlega vel og sjónvarpsfjarstýringin er mjög góð í það). Mín reynsla af android TV boxum er samt að þau keyra öpp ekkert allt of vel (t.d. twitch var bara ekki hægt í xtreamernum, svo vantar náttúrulega vod access og svoleiðis en það er ekkert að fara að breytast með hardware \n) og þegar maður er svo kominn í \"android TV\" hugbúnaðinn (er þetta með því eða venjulegu?) þá takmarkaðist úrvalið af öppum mikið og maður þurfti að fara leiðinlegar leiðir að non TV öppum og þau virkuðu illa (í xtreamer amk, ég var snöggur að downgrada hann úr android tv). En það var xtreamerinn, hörmuleg græja, fékk alveg bara gamla nexus S android fílinginn út úr þessu.\nEinhver sem vill segja smá kosti og galla og svona hvað hann notar þetta í?",
"date": "2016-11-20 23:45:00",
"post_id": "637202",
"reply_to_id": "637111"
},
{
"user_name": "Alfa",
"text": "Nú er ég sjálfur hjá símanum svo ég get ekki svarað til um vodafone ruglarann né 365 appið en einhvernvegin stórefa ég að þú fáir jafn góða mynd úr appinu og ruglaranum. Allavega \"símaappið\" hjá símanum á ekkert í \"HD\" stöðvarnar í gegnum ruglarann.\nTil að svara með boxið, nei þetta er android, og plúsinn við það er hvað það er opið en ekki alltaf 100% auðvelt, eitthvað sem sennilega AppleTV er. Þó ég myndi ekki snerta AppleTv með annara manna höndum persónulega. Þessi Beelink box eru ekki high end en þau duga í flest.",
"date": "2016-11-21 08:35:00",
"post_id": "637207",
"reply_to_id": "637202"
}
],
"date": "2016-11-19 12:50:00"
} |
{"poster":"Mc Kenzy","date":"2018-09-26T17:36:46.361+0000","title":"Cerco Persone per quest 2 Aug","subforum":"Discussioni generali","up_votes":1,"down_votes":1,"body":"Cerco qualcuno che debba fare la quest "2 potenziamenti" addatemi","replies":[{"poster":"Eien no Senshi","date":"2018-09-27T01:39:45.944+0000","up_votes":1,"down_votes":0,"body":"Se non ce l'hai ancora fatta addami, il mio nickname è \"Eien no Senshi\"","replies":[]},{"poster":"oO0oMo0Oo","date":"2018-09-26T20:16:34.029+0000","up_votes":1,"down_votes":0,"body":"Cerco Persone per quest 2 https://www.repstatic.it/content/nazionale/img/2018/04/16/164343168-45e6462e-97cf-47c4-b4c7-85f2ad0f84c1.jpg\nè quello che mi è venuto in mente mentre leggevo il titolo...","replies":[]}]} |
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{"poster":"DustyEpTic","date":"2017-07-03T20:32:54.032+0000","title":"Jungler main csapatot keres","subforum":"Csapat- és csapattagkereső","up_votes":1,"down_votes":0,"body":"Platinum V (solo/duo) gold I lassan plat V (flex)\r\n\r\nNagy champion pool, ts, skype, 17 éves vagyok. nem rage-lek \r\n\r\nunom hogy már 2éve egyedül játszom ezért szivesen játszanék csapatba\r\n\r\nskype: Par4jka lol: Dustyeptic\r\n\r\nMinden nap játszom legalább 2 órát(ha nem többet) persze ez helyzet függő","replies":[]} |
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{"poster":"desafree","date":"2015-07-26T19:29:34.117+0000","title":"support graves","subforum":"Campioni e gameplay","up_votes":1,"down_votes":3,"body":"sapete dirmi quale support va meglio in oppia con graves","replies":[{"poster":"Ucr0niA","date":"2015-07-27T12:54:41.366+0000","up_votes":1,"down_votes":0,"body":"{{champion:89}} o {{champion:1}} a seconda della lane nemica e della necessità più complessiva (a livello di team) di un mage o di un tank.","replies":[]},{"poster":"Vileblood Pyke","date":"2015-07-27T12:50:01.563+0000","up_votes":1,"down_votes":0,"body":"In generale un support aggressivo che possa permettergli di fare kill in lane.","replies":[]},{"poster":"James krik","date":"2015-07-26T21:41:42.868+0000","up_votes":1,"down_votes":0,"body":"Penso che un buon supporto aggressivo come Leona sia ottimo con Graves...","replies":[]},{"poster":"Mar15ste","date":"2015-07-26T20:24:19.796+0000","up_votes":1,"down_votes":0,"body":"La prossima volta fai un post unico.\nComunque con Graves ci va bene Annie per via del burst che fanno in combo con le ulti.","replies":[]},{"poster":"TrustMe ItWorks","date":"2015-07-26T20:38:34.835+0000","up_votes":1,"down_votes":2,"body":"A Graves serve un support?","replies":[]}]} |
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{"response": {"status": "ok", "userTier": "developer", "total": 1, "content": {"id": "film/2008/nov/09/speed-racer-dvd-review", "type": "article", "sectionId": "film", "sectionName": "Film", "webPublicationDate": "2008-11-09T15:55:00Z", "webTitle": "DVD of the week: Speed Racer", "webUrl": "https://www.theguardian.com/film/2008/nov/09/speed-racer-dvd-review", "apiUrl": "https://content.guardianapis.com/film/2008/nov/09/speed-racer-dvd-review", "fields": {"headline": "Speed Racer", "bodyText": "The wayward Wachowski brothers made their name with the bluetinged, erotic neo-noir of Bound and the green-hued, computerised darkness of the Matrix trilogy. In stark contrast, Speed Racer turns the pastel pinks up to 11, conjuring a retina-threatening festival of sugarcoated eye-candy which makes the average episode of Teletubbies look sinisterly underlit. If you ever wondered what it would feel like to snort Vimto or stick your head into a candyfloss spinner (who hasn't?), then take a hit of this insanely oversweetened paean to primary colours. Based on the kinetic Japanese manga-anime series Mach GoGoGo, which was redubbed Speed Racer for Stateside audiences, this cleancut, milk-drinking romp follows the fortunes of the titular driver (yes, that's his name, played by Emile Hirsch) as he strives to become the fastest man on Earth. This he does by drifting through a string of loop-the-loop racetrack fantasias in a blizzard of cutting-edge digital fizz. En route to the finishing flag, Speed is forced to choose between loyalty to the Team Racer family clan and selling his soul to corporate bigwigs with zero sporting spirit. One presumes that the film-makers considered this conflict to be the underlying 'theme' of the piece since crucial time is wasted as characters contemplate corporate corruption in a manner which will surely bore or baffle the core kids' audience. But it's the eye-popping pyrotechnic race sequences which remain the film's true raison d'etre, achieving a level of deranged virtual otherworldliness amounting to an attention-deficit cinematic sugar rush with an extreme pop-art psychedelic sensibility. Perhaps the plot problems explain Speed Racer's resounding failure in cinemas, but on DVD a little editing with the fast forward button allows the viewer to cut to the chase with winning results. Shame the Wachowskis weren't on hand to provide lap-bylap commentary."}, "isHosted": false, "pillarId": "pillar/arts", "pillarName": "Arts"}}} |
{"notes": [{"id": "zbEupOtJFF", "original": "Pqau_PN5C99", "number": 704, "cdate": 1601308083197, "ddate": null, "tcdate": 1601308083197, "tmdate": 1614985725636, "tddate": null, "forum": "zbEupOtJFF", "replyto": null, "invitation": "ICLR.cc/2021/Conference/-/Blind_Submission", "content": {"title": "On interaction between augmentations and corruptions in natural corruption robustness", "authorids": ["~Eric_Mintun1", "~Alexander_Kirillov1", "~Saining_Xie2"], "authors": ["Eric Mintun", "Alexander Kirillov", "Saining Xie"], "keywords": ["corruption robustness", "data augmentation", "perceptual similarity", "deep learning"], "abstract": "Invariance to a broad array of image corruptions, such as warping, noise, or color shifts, is an important aspect of building robust models in computer vision. Recently, several new data augmentations have been proposed that significantly improve performance on ImageNet-C, a benchmark of such corruptions. However, there is still a lack of basic understanding on the relationship between data augmentations and test-time corruptions. To this end, we develop a feature space for image transforms, and then use a new measure in this space between augmentations and corruptions called the Minimal Sample Distance to demonstrate there is a strong correlation between similarity and performance. We then investigate recent data augmentations and observe a significant degradation in corruption robustness when the test-time corruptions are sampled to be perceptually dissimilar from ImageNet-C in this feature space. Our results suggest that test error can be improved by training on perceptually similar augmentations, and data augmentations may risk overfitting to the existing benchmark. We hope our results and tools will allow for more robust progress towards improving robustness to image corruptions.", "code_of_ethics": "I acknowledge that I and all co-authors of this work have read and commit to adhering to the ICLR Code of Ethics", "paperhash": "mintun|on_interaction_between_augmentations_and_corruptions_in_natural_corruption_robustness", "one-sentence_summary": "We show that data augmentation improves error on images corrupted by transforms that are visually similar to the augmentations and that this leads to overfitting on a common corruption benchmark.", "pdf": "/pdf/a58ff8e728278c3fecd495d3fcd7da6e22f17e0a.pdf", "reviewed_version_(pdf)": "https://openreview.net/references/pdf?id=equE_LsqFX", "_bibtex": "@misc{\nmintun2021on,\ntitle={On interaction between augmentations and corruptions in natural corruption robustness},\nauthor={Eric Mintun and Alexander Kirillov and Saining Xie},\nyear={2021},\nurl={https://openreview.net/forum?id=zbEupOtJFF}\n}"}, "signatures": ["ICLR.cc/2021/Conference"], "readers": ["everyone"], "nonreaders": [], "writers": ["ICLR.cc/2021/Conference"], "details": {"replyCount": 9, "writable": false, "overwriting": [], "revisions": true, "tags": [], "invitation": {"reply": {"readers": {"values-regex": ".*"}, "writers": {"values": ["ICLR.cc/2021/Conference"]}, "signatures": {"values": ["ICLR.cc/2021/Conference"]}, "content": {"authors": {"values": ["Anonymous"]}, "authorids": {"values-regex": ".*"}, "reviewed_version_(pdf)": {"required": false, "description": "Upload a PDF file that ends with .pdf", "value-regex": ".*"}}}, "signatures": ["ICLR.cc/2021/Conference"], "readers": ["everyone"], "writers": ["ICLR.cc/2021/Conference"], "invitees": ["~", "OpenReview.net/Support"], "tcdate": 1601308008205, "tmdate": 1614984599368, "id": "ICLR.cc/2021/Conference/-/Blind_Submission"}}, "tauthor": "OpenReview.net"}, {"id": "i7NB1PR06wX", "original": null, "number": 1, "cdate": 1610040414703, "ddate": null, "tcdate": 1610040414703, "tmdate": 1610474012629, "tddate": null, "forum": "zbEupOtJFF", "replyto": "zbEupOtJFF", "invitation": "ICLR.cc/2021/Conference/Paper704/-/Decision", "content": {"title": "Final Decision", "decision": "Reject", "comment": "The paper investigates the relationship between data augmentations used during training and their effect on the accuracy when evaluated on unseen corruptions at test-time. The paper proposes a metric called minimal sample distance (MSD) to measure the similarity between augmentations during training time and corruptions at test time.\n\nThe reviewers agree that the paper aims to solve an important problem and the paper has some interesting findings. However, the current version has a few shortcomings:\n- Some of the claims about \u201coverfitting\u201d are confusing, especially for data augmentations that use ops similar to those in ImageNet-C. This is already known and which is why some papers uses a subset of operations (e.g. AugMix uses a subset of AutoAugment operations).\n- The main take-home message and novelty is unclear: The initial version titled (\u201cIs Robustness Robust?\u201c) seemed to argue that we may be overfitting to Imagenet-C, but the rebuttal and the updated version revised some of the claims (see response to R3 and R4). In light of the revision, I\u2019m not sure how the main take-home messages differ from existing papers such as Yin et al. 2019 or \u201cMany faces of robustness\u201d. \n- One of the main differences is quantification of the distribution similarity, however, as pointed out by R2, this analysis does not explain when stylized corruptions would help, so the current version of the paper feels a bit incomplete to me.\n\nI recommend the authors to revise the draft based on reviewer feedback and resubmit the paper to another venue.\n"}, "signatures": ["ICLR.cc/2021/Conference/Program_Chairs"], "readers": ["everyone"], "nonreaders": [], "writers": ["ICLR.cc/2021/Conference/Program_Chairs"], "details": {"replyCount": 0, "writable": false, "overwriting": [], "revisions": false, "forumContent": {"title": "On interaction between augmentations and corruptions in natural corruption robustness", "authorids": ["~Eric_Mintun1", "~Alexander_Kirillov1", "~Saining_Xie2"], "authors": ["Eric Mintun", "Alexander Kirillov", "Saining Xie"], "keywords": ["corruption robustness", "data augmentation", "perceptual similarity", "deep learning"], "abstract": "Invariance to a broad array of image corruptions, such as warping, noise, or color shifts, is an important aspect of building robust models in computer vision. Recently, several new data augmentations have been proposed that significantly improve performance on ImageNet-C, a benchmark of such corruptions. However, there is still a lack of basic understanding on the relationship between data augmentations and test-time corruptions. To this end, we develop a feature space for image transforms, and then use a new measure in this space between augmentations and corruptions called the Minimal Sample Distance to demonstrate there is a strong correlation between similarity and performance. We then investigate recent data augmentations and observe a significant degradation in corruption robustness when the test-time corruptions are sampled to be perceptually dissimilar from ImageNet-C in this feature space. Our results suggest that test error can be improved by training on perceptually similar augmentations, and data augmentations may risk overfitting to the existing benchmark. We hope our results and tools will allow for more robust progress towards improving robustness to image corruptions.", "code_of_ethics": "I acknowledge that I and all co-authors of this work have read and commit to adhering to the ICLR Code of Ethics", "paperhash": "mintun|on_interaction_between_augmentations_and_corruptions_in_natural_corruption_robustness", "one-sentence_summary": "We show that data augmentation improves error on images corrupted by transforms that are visually similar to the augmentations and that this leads to overfitting on a common corruption benchmark.", "pdf": "/pdf/a58ff8e728278c3fecd495d3fcd7da6e22f17e0a.pdf", "reviewed_version_(pdf)": "https://openreview.net/references/pdf?id=equE_LsqFX", "_bibtex": "@misc{\nmintun2021on,\ntitle={On interaction between augmentations and corruptions in natural corruption robustness},\nauthor={Eric Mintun and Alexander Kirillov and Saining Xie},\nyear={2021},\nurl={https://openreview.net/forum?id=zbEupOtJFF}\n}"}, "tags": [], "invitation": {"reply": {"forum": "zbEupOtJFF", "replyto": "zbEupOtJFF", "readers": {"values": ["everyone"]}, "writers": {"values": ["ICLR.cc/2021/Conference/Program_Chairs"]}, "signatures": {"values": ["ICLR.cc/2021/Conference/Program_Chairs"]}, "content": {"title": {"value": "Final Decision"}, "decision": {"value-radio": ["Accept (Oral)", "Accept (Spotlight)", "Accept (Poster)", "Reject"]}, "comment": {"value-regex": "[\\S\\s]{0,50000}", "markdown": true}}}, "multiReply": false, "signatures": ["ICLR.cc/2021/Conference"], "readers": ["everyone"], "writers": ["ICLR.cc/2021/Conference"], "invitees": ["ICLR.cc/2021/Conference/Program_Chairs"], "tcdate": 1610040414690, "tmdate": 1610474012611, "id": "ICLR.cc/2021/Conference/Paper704/-/Decision"}}}, {"id": "2OMZK3oJOhh", "original": null, "number": 2, "cdate": 1603899059217, "ddate": null, "tcdate": 1603899059217, "tmdate": 1607370866127, "tddate": null, "forum": "zbEupOtJFF", "replyto": "zbEupOtJFF", "invitation": "ICLR.cc/2021/Conference/Paper704/-/Official_Review", "content": {"title": "Review of AnonReviewer2", "review": "Summary \nThe paper studies the importance of similarity between augmentations and corruptions for improving performance on those corruptions. To measure the distance between the augmentation and corruption distributions, the paper proposes a new metric, Minimal Sample Distance (MSD), which is the perceptual similarity between an average corruption and the closest augmentation from a finite set of samples sampled from the augmented data distribution. It is shown that MSD overcomes the drawbacks of distributional distance measures like Maximum Mean Discrepancy (MMD). A new benchmark, called ImageNet-C-bar, made up of corruptions that are perceptually dissimilar to ImageNet-C, is introduced. Using standard evaluation, it is empirically shown that several recent augmentation schemes show degraded performance on the new dataset, suggesting that they generate augmentations only perceptually similar to ImageNet-C and thus are prone to overfitting. \n\n+ves\n+ Although the notion of the relation between augmentations and test-time corruptions has somewhat already been empirically observed and stated in many previous works, the paper tries to correlate this relation statistically. To my knowledge, this is the first such work.\n+ Through comprehensive evaluations, the paper shows that the proposition of computing MSD rather than MMD correlates well with the relation between augmentations and corruptions observed in reality.\n+ A new benchmark, ImageNet-C-bar is proposed, which shows a useful result to the community that recent SOTA augmentation methods have degraded performance on the new dataset because they generate augmentations close to ImageNet-C corruptions. \n\nConcerns\n- The paper says (pg 2) - \u201cwe empirically show an intuitive yet surprisingly overlooked finding: Augmentation-corruption perceptual similarity is a strong predictor of corruption error\u201d. However, this notion of the relation between augmentations and test-time corruptions does not seem very surprising. It\u2019s perhaps well-known that DNNs will generalize well only when test distributions are fairly similar to training distributions. Hence, the importance of this observation does seem to be overemphasized, although this is certainly of use. \n\n- It's been recently shown that removing texture biases by introducing stylized transformations also improves robustness to common-corruptions (Geirhos et al, ICLR 2019). However, stylized transformations don\u2019t look close to any Imagenet-C corruptions. If MSD of stylized transforms is large (which intuitively seems so), then it will mean that MSD is not a reliable metric in such a case. Was this studied? Would MSD be a reliable metric even in such cases? It would be good to understand this, to get a more well-rounded picture of the proposed metric. \n\n- Paper introduces MSD as a distance metric. However, distance metrics should be symmetric in nature. It is not quite evident from just Eq-1 if MSD is symmetric. \n\n- In addition, adding high severity corruption as training augmentation leads to better performance on the same low severity corruption but vice-versa is not true in general. This suggests that measures should perhaps ideally be asymmetric. Clarifying the notion of \u201cdistance metric\u201d in this work may be important to make the work mathematically correct.\n\n- Standard choices for measuring perceptual distances are VGG-16 or 19 networks pre-trained on ImageNet. However, the paper chooses to use WRN-40-10 trained on CIFAR-10. This seems to deviate from standard settings. The paper should explain the rationale behind their choice. It will be great to show an ablation on how this choice of feature extractor (VGG-19, Robust VGG etc) affects the MSD. Ideally, the metric should be robust i.e. shouldn\u2019t be sensitive to the choice of feature extractor.\n\n- The practical utility of ImageNet-C-bar seems limited and unclear. The only use that I can think of is using it to identify overfitting on ImageNet-C. I would be happy to understand what I am missing here.\n\nPOST-REBUTTAL:\n\nI thank the authors for the response and the revisions to the paper. I appreciate the authors' efforts towards the rebuttal. I am however left with some concerns which did not have a convincing resolution:\n\n* Regarding the comment on how the proposed analysis would look for stylized transforms, the authors say in the response that \"...we don\u2019t expect that perceptual similarity is the only cause of improved corruption error, only that perceptual similarity is particularly salient for predicting generalization to dissimilar corruptions...\". The work seems to be one-sided in this regard. If stylized transforms don't look perceptually similar to ImageNet-C corruptions but provide robustness, this counters the proposed hypothesis. It then becomes important to say where the proposed analysis is meaningful and where it is not. This seems to be lacking at this time in the work.\n\n* Regarding the robustness of MSD to the choice of feature extractor (as also asked by R1), the revised paper includes results on VGG as feature extractor (thanks to the authors for this), but uses a model that is finetuned for CIFAR-10. In general, perceptual similarity is studied directly taking VGG pre-trained on ImageNet - without finetuning on the target dataset. This leaves this question open, and makes one wonder if the latter features did not support the analysis.\n\n* The utility of Imagenet-C-bar as an additional benchmark to check the goodness of performance on Imagenet-C seems a bit convoluted. Would we need a Imagenet-C-bar-bar to check the goodness for corruptions that may be beyond perceptual similarity (such as stylized transforms)? This is not very convincing.\n\nOverall, I am still on the fence on this work (and retain my original decision at this time). I think the paper does present an interesting insight, but I am not very convinced it has been studied and explored comprehensively enough. I would have ideally preferred to give a borderline (neither positive nor negative) decision, and will not be disappointed if the work is accepted, considering the interesting insights it offers. ", "rating": "5: Marginally below acceptance threshold", "confidence": "4: The reviewer is confident but not absolutely certain that the evaluation is correct"}, "signatures": ["ICLR.cc/2021/Conference/Paper704/AnonReviewer2"], "readers": ["everyone"], "nonreaders": [], "writers": ["ICLR.cc/2021/Conference", "ICLR.cc/2021/Conference/Paper704/AnonReviewer2"], "details": {"replyCount": 0, "writable": false, "overwriting": [], "revisions": false, "forumContent": {"title": "On interaction between augmentations and corruptions in natural corruption robustness", "authorids": ["~Eric_Mintun1", "~Alexander_Kirillov1", "~Saining_Xie2"], "authors": ["Eric Mintun", "Alexander Kirillov", "Saining Xie"], "keywords": ["corruption robustness", "data augmentation", "perceptual similarity", "deep learning"], "abstract": "Invariance to a broad array of image corruptions, such as warping, noise, or color shifts, is an important aspect of building robust models in computer vision. Recently, several new data augmentations have been proposed that significantly improve performance on ImageNet-C, a benchmark of such corruptions. However, there is still a lack of basic understanding on the relationship between data augmentations and test-time corruptions. To this end, we develop a feature space for image transforms, and then use a new measure in this space between augmentations and corruptions called the Minimal Sample Distance to demonstrate there is a strong correlation between similarity and performance. We then investigate recent data augmentations and observe a significant degradation in corruption robustness when the test-time corruptions are sampled to be perceptually dissimilar from ImageNet-C in this feature space. Our results suggest that test error can be improved by training on perceptually similar augmentations, and data augmentations may risk overfitting to the existing benchmark. We hope our results and tools will allow for more robust progress towards improving robustness to image corruptions.", "code_of_ethics": "I acknowledge that I and all co-authors of this work have read and commit to adhering to the ICLR Code of Ethics", "paperhash": "mintun|on_interaction_between_augmentations_and_corruptions_in_natural_corruption_robustness", "one-sentence_summary": "We show that data augmentation improves error on images corrupted by transforms that are visually similar to the augmentations and that this leads to overfitting on a common corruption benchmark.", "pdf": "/pdf/a58ff8e728278c3fecd495d3fcd7da6e22f17e0a.pdf", "reviewed_version_(pdf)": "https://openreview.net/references/pdf?id=equE_LsqFX", "_bibtex": "@misc{\nmintun2021on,\ntitle={On interaction between augmentations and corruptions in natural corruption robustness},\nauthor={Eric Mintun and Alexander Kirillov and Saining Xie},\nyear={2021},\nurl={https://openreview.net/forum?id=zbEupOtJFF}\n}"}, "tags": [], "invitation": {"reply": {"content": {"title": {"order": 1, "value-regex": ".{0,500}", "description": "Brief summary of your review.", "required": true}, "review": {"order": 2, "value-regex": "[\\S\\s]{1,200000}", "description": "Please provide an evaluation of the quality, clarity, originality and significance of this work, including a list of its pros and cons (max 200000 characters). Add formatting using Markdown and formulas using LaTeX. For more information see https://openreview.net/faq . ***Please remember to file the Code-of-Ethics report. Once you submitted the review, a link to the report will be visible in the bottom right corner of your review.***", "required": true, "markdown": true}, "rating": {"order": 3, "value-dropdown": ["10: Top 5% of accepted papers, seminal paper", "9: Top 15% of accepted papers, strong accept", "8: Top 50% of accepted papers, clear accept", "7: Good paper, accept", "6: Marginally above acceptance threshold", "5: Marginally below acceptance threshold", "4: Ok but not good enough - rejection", "3: Clear rejection", "2: Strong rejection", "1: Trivial or wrong"], "required": true}, "confidence": {"order": 4, "value-radio": ["5: The reviewer is absolutely certain that the evaluation is correct and very familiar with the relevant literature", "4: The reviewer is confident but not absolutely certain that the evaluation is correct", "3: The reviewer is fairly confident that the evaluation is correct", "2: The reviewer is willing to defend the evaluation, but it is quite likely that the reviewer did not understand central parts of the paper", "1: The reviewer's evaluation is an educated guess"], "required": true}}, "forum": "zbEupOtJFF", "replyto": "zbEupOtJFF", "readers": {"description": "Select all user groups that should be able to read this comment.", "values": ["everyone"]}, "nonreaders": {"values": []}, "writers": {"values-copied": ["ICLR.cc/2021/Conference", "{signatures}"], "description": "How your identity will be displayed."}, "signatures": {"values-regex": "ICLR.cc/2021/Conference/Paper704/AnonReviewer[0-9]+", "description": "How your identity will be displayed."}}, "expdate": 1607428800000, "duedate": 1606752000000, "multiReply": false, "readers": ["everyone"], "tcdate": 1602538136950, "tmdate": 1606915776717, "super": "ICLR.cc/2021/Conference/-/Official_Review", "signatures": ["OpenReview.net"], "writers": ["ICLR.cc/2021/Conference"], "invitees": ["ICLR.cc/2021/Conference/Paper704/Reviewers", "OpenReview.net/Support"], "id": "ICLR.cc/2021/Conference/Paper704/-/Official_Review"}}}, {"id": "GECfZ-aPmhQ", "original": null, "number": 3, "cdate": 1603920497507, "ddate": null, "tcdate": 1603920497507, "tmdate": 1607199456324, "tddate": null, "forum": "zbEupOtJFF", "replyto": "zbEupOtJFF", "invitation": "ICLR.cc/2021/Conference/Paper704/-/Official_Review", "content": {"title": "Interesting analysis, but some strange comparisons", "review": "The paper introduces the Minimal Sample Distance (MSD): a measure of the minimal distance, in a trained network representation space, between samples modified with an augmentation and the average of all samples modified by a corruption. It uses this metric to claim that there exists a high correlation between the corruption error and the MSD of a given augmentation. This way, it claims that focusing on benchmarks like ImageNet-C may lead to overfitting to the corruptions present in that benchmark. \n\nOne problem is that this correlation isn\u2019t true for all augmentations. Only 4 are highlighted in the main text. As the paper describes, a few corruptions have spearman coefficient of less than 0.5. Particularly notable is brightness which, despite having very low spearman coefficient, is used to show that Patch Gaussian has \u201coverfit\u201d to the noise corruptions in the ImageNet-C benchmark. This is especially worrying since in their original paper, Patch Gaussian shows improvement in non-noise as well, which couldn\u2019t have come from overfitting. Additionally, why was AutoAugment, but not RandAugment tested?\n\nAnother concern is that it may not make sense to compare single augmentations (such as Patch Gaussian) with augmentation policies, such as AutoAugment, RandAugment, and AugMix. It\u2019s possible that individual augmentations in these policies \u201coverfit\u201d to the corruptions as well, but that this isn\u2019t shown in MSD due to the use of many corruptions. In which case, using PatchGaussian in the RandAugment search space (for instance) would resolve any issues. \n\nThe paper argues that AutoAugment \"overfits\" while AugMix doesn't, but that's only because AugMix explicitly removed any augmentations in ImageNet-C from its search space, so it would make sense to repeat this experiment with the augmentations present in AugMix in order to confirm that it doesn't indeed \"overfit\".\n\nThe paper then suggests that one solution would be to use MSD to sample dissimilar corruptions to test on. However, given that it seems like there\u2019s no evidence of overfitting for augmentation policies that encourage a diversity of augmentations, such as AugMix (which is in line with Yin et al 2019). Then I\u2019m not sure what the benefit of expanding the robustness benchmark is. If current methods have indeed overfit, why won\u2019t we also overfit to the new benchmark\u2019s corruptions? \n\nOverall, the paper presents interesting results and discussion. \n\nUpdate after rebuttal: I appreciate the authors' response and clarifications. I maintain my original score.\n", "rating": "6: Marginally above acceptance threshold", "confidence": "4: The reviewer is confident but not absolutely certain that the evaluation is correct"}, "signatures": ["ICLR.cc/2021/Conference/Paper704/AnonReviewer4"], "readers": ["everyone"], "nonreaders": [], "writers": ["ICLR.cc/2021/Conference", "ICLR.cc/2021/Conference/Paper704/AnonReviewer4"], "details": {"replyCount": 0, "writable": false, "overwriting": [], "revisions": false, "forumContent": {"title": "On interaction between augmentations and corruptions in natural corruption robustness", "authorids": ["~Eric_Mintun1", "~Alexander_Kirillov1", "~Saining_Xie2"], "authors": ["Eric Mintun", "Alexander Kirillov", "Saining Xie"], "keywords": ["corruption robustness", "data augmentation", "perceptual similarity", "deep learning"], "abstract": "Invariance to a broad array of image corruptions, such as warping, noise, or color shifts, is an important aspect of building robust models in computer vision. Recently, several new data augmentations have been proposed that significantly improve performance on ImageNet-C, a benchmark of such corruptions. However, there is still a lack of basic understanding on the relationship between data augmentations and test-time corruptions. To this end, we develop a feature space for image transforms, and then use a new measure in this space between augmentations and corruptions called the Minimal Sample Distance to demonstrate there is a strong correlation between similarity and performance. We then investigate recent data augmentations and observe a significant degradation in corruption robustness when the test-time corruptions are sampled to be perceptually dissimilar from ImageNet-C in this feature space. Our results suggest that test error can be improved by training on perceptually similar augmentations, and data augmentations may risk overfitting to the existing benchmark. We hope our results and tools will allow for more robust progress towards improving robustness to image corruptions.", "code_of_ethics": "I acknowledge that I and all co-authors of this work have read and commit to adhering to the ICLR Code of Ethics", "paperhash": "mintun|on_interaction_between_augmentations_and_corruptions_in_natural_corruption_robustness", "one-sentence_summary": "We show that data augmentation improves error on images corrupted by transforms that are visually similar to the augmentations and that this leads to overfitting on a common corruption benchmark.", "pdf": "/pdf/a58ff8e728278c3fecd495d3fcd7da6e22f17e0a.pdf", "reviewed_version_(pdf)": "https://openreview.net/references/pdf?id=equE_LsqFX", "_bibtex": "@misc{\nmintun2021on,\ntitle={On interaction between augmentations and corruptions in natural corruption robustness},\nauthor={Eric Mintun and Alexander Kirillov and Saining Xie},\nyear={2021},\nurl={https://openreview.net/forum?id=zbEupOtJFF}\n}"}, "tags": [], "invitation": {"reply": {"content": {"title": {"order": 1, "value-regex": ".{0,500}", "description": "Brief summary of your review.", "required": true}, "review": {"order": 2, "value-regex": "[\\S\\s]{1,200000}", "description": "Please provide an evaluation of the quality, clarity, originality and significance of this work, including a list of its pros and cons (max 200000 characters). Add formatting using Markdown and formulas using LaTeX. For more information see https://openreview.net/faq . ***Please remember to file the Code-of-Ethics report. Once you submitted the review, a link to the report will be visible in the bottom right corner of your review.***", "required": true, "markdown": true}, "rating": {"order": 3, "value-dropdown": ["10: Top 5% of accepted papers, seminal paper", "9: Top 15% of accepted papers, strong accept", "8: Top 50% of accepted papers, clear accept", "7: Good paper, accept", "6: Marginally above acceptance threshold", "5: Marginally below acceptance threshold", "4: Ok but not good enough - rejection", "3: Clear rejection", "2: Strong rejection", "1: Trivial or wrong"], "required": true}, "confidence": {"order": 4, "value-radio": ["5: The reviewer is absolutely certain that the evaluation is correct and very familiar with the relevant literature", "4: The reviewer is confident but not absolutely certain that the evaluation is correct", "3: The reviewer is fairly confident that the evaluation is correct", "2: The reviewer is willing to defend the evaluation, but it is quite likely that the reviewer did not understand central parts of the paper", "1: The reviewer's evaluation is an educated guess"], "required": true}}, "forum": "zbEupOtJFF", "replyto": "zbEupOtJFF", "readers": {"description": "Select all user groups that should be able to read this comment.", "values": ["everyone"]}, "nonreaders": {"values": []}, "writers": {"values-copied": ["ICLR.cc/2021/Conference", "{signatures}"], "description": "How your identity will be displayed."}, "signatures": {"values-regex": "ICLR.cc/2021/Conference/Paper704/AnonReviewer[0-9]+", "description": "How your identity will be displayed."}}, "expdate": 1607428800000, "duedate": 1606752000000, "multiReply": false, "readers": ["everyone"], "tcdate": 1602538136950, "tmdate": 1606915776717, "super": "ICLR.cc/2021/Conference/-/Official_Review", "signatures": ["OpenReview.net"], "writers": ["ICLR.cc/2021/Conference"], "invitees": ["ICLR.cc/2021/Conference/Paper704/Reviewers", "OpenReview.net/Support"], "id": "ICLR.cc/2021/Conference/Paper704/-/Official_Review"}}}, {"id": "qIGKxk2Q14W", "original": null, "number": 4, "cdate": 1604027615623, "ddate": null, "tcdate": 1604027615623, "tmdate": 1606810205706, "tddate": null, "forum": "zbEupOtJFF", "replyto": "zbEupOtJFF", "invitation": "ICLR.cc/2021/Conference/Paper704/-/Official_Review", "content": {"title": "Official Review", "review": "The paper introduces a metric to quantify the perceptual similarity between different kind of corruptions and uses it to show that training on a corruptions induces robustness to other corruptions which are perceptually similar. Analyzing the current data augmentation based methods for robustness using this lens, the authors hypothesis that we are currently overfitting to the existing robustness benchmark (ImageNet-C) and proposes a new benchmark with a new set of corruptions. \n\nI think the author's observations that training on some corruptions helps the network to be robust to similar corruptions in test time is quite intuitive. I appreciate that the paper tries to quantify this and performs an extensive empirical study. The insight from this study and the new proposed benchmark will be useful to further advance the research in this area. \n\nI have a some questions/clarifications:\n1. What are the augmentations that were used while training the network used to extract features for the metric? Does the metric will probably depend on the architecture of the network used as well. Have you verified that the metric is robust to different architectures and the same conclusion holds? I am not sure if this is in the supplementary material somewhere and I missed it. \n2. Do we find any non-intuitive pairs of corruptions which are similar? It occurs to me that most geometric based corruptions are similar and noise based corruptions are similar etc, but is there any pair of corruptions across these groups that the metric identifies as similar?\n\n\nUpdate after rebuttal: I appreciate the author response. I will maintain my original score.\n", "rating": "7: Good paper, accept", "confidence": "4: The reviewer is confident but not absolutely certain that the evaluation is correct"}, "signatures": ["ICLR.cc/2021/Conference/Paper704/AnonReviewer1"], "readers": ["everyone"], "nonreaders": [], "writers": ["ICLR.cc/2021/Conference", "ICLR.cc/2021/Conference/Paper704/AnonReviewer1"], "details": {"replyCount": 0, "writable": false, "overwriting": [], "revisions": false, "forumContent": {"title": "On interaction between augmentations and corruptions in natural corruption robustness", "authorids": ["~Eric_Mintun1", "~Alexander_Kirillov1", "~Saining_Xie2"], "authors": ["Eric Mintun", "Alexander Kirillov", "Saining Xie"], "keywords": ["corruption robustness", "data augmentation", "perceptual similarity", "deep learning"], "abstract": "Invariance to a broad array of image corruptions, such as warping, noise, or color shifts, is an important aspect of building robust models in computer vision. Recently, several new data augmentations have been proposed that significantly improve performance on ImageNet-C, a benchmark of such corruptions. However, there is still a lack of basic understanding on the relationship between data augmentations and test-time corruptions. To this end, we develop a feature space for image transforms, and then use a new measure in this space between augmentations and corruptions called the Minimal Sample Distance to demonstrate there is a strong correlation between similarity and performance. We then investigate recent data augmentations and observe a significant degradation in corruption robustness when the test-time corruptions are sampled to be perceptually dissimilar from ImageNet-C in this feature space. Our results suggest that test error can be improved by training on perceptually similar augmentations, and data augmentations may risk overfitting to the existing benchmark. We hope our results and tools will allow for more robust progress towards improving robustness to image corruptions.", "code_of_ethics": "I acknowledge that I and all co-authors of this work have read and commit to adhering to the ICLR Code of Ethics", "paperhash": "mintun|on_interaction_between_augmentations_and_corruptions_in_natural_corruption_robustness", "one-sentence_summary": "We show that data augmentation improves error on images corrupted by transforms that are visually similar to the augmentations and that this leads to overfitting on a common corruption benchmark.", "pdf": "/pdf/a58ff8e728278c3fecd495d3fcd7da6e22f17e0a.pdf", "reviewed_version_(pdf)": "https://openreview.net/references/pdf?id=equE_LsqFX", "_bibtex": "@misc{\nmintun2021on,\ntitle={On interaction between augmentations and corruptions in natural corruption robustness},\nauthor={Eric Mintun and Alexander Kirillov and Saining Xie},\nyear={2021},\nurl={https://openreview.net/forum?id=zbEupOtJFF}\n}"}, "tags": [], "invitation": {"reply": {"content": {"title": {"order": 1, "value-regex": ".{0,500}", "description": "Brief summary of your review.", "required": true}, "review": {"order": 2, "value-regex": "[\\S\\s]{1,200000}", "description": "Please provide an evaluation of the quality, clarity, originality and significance of this work, including a list of its pros and cons (max 200000 characters). Add formatting using Markdown and formulas using LaTeX. For more information see https://openreview.net/faq . ***Please remember to file the Code-of-Ethics report. Once you submitted the review, a link to the report will be visible in the bottom right corner of your review.***", "required": true, "markdown": true}, "rating": {"order": 3, "value-dropdown": ["10: Top 5% of accepted papers, seminal paper", "9: Top 15% of accepted papers, strong accept", "8: Top 50% of accepted papers, clear accept", "7: Good paper, accept", "6: Marginally above acceptance threshold", "5: Marginally below acceptance threshold", "4: Ok but not good enough - rejection", "3: Clear rejection", "2: Strong rejection", "1: Trivial or wrong"], "required": true}, "confidence": {"order": 4, "value-radio": ["5: The reviewer is absolutely certain that the evaluation is correct and very familiar with the relevant literature", "4: The reviewer is confident but not absolutely certain that the evaluation is correct", "3: The reviewer is fairly confident that the evaluation is correct", "2: The reviewer is willing to defend the evaluation, but it is quite likely that the reviewer did not understand central parts of the paper", "1: The reviewer's evaluation is an educated guess"], "required": true}}, "forum": "zbEupOtJFF", "replyto": "zbEupOtJFF", "readers": {"description": "Select all user groups that should be able to read this comment.", "values": ["everyone"]}, "nonreaders": {"values": []}, "writers": {"values-copied": ["ICLR.cc/2021/Conference", "{signatures}"], "description": "How your identity will be displayed."}, "signatures": {"values-regex": "ICLR.cc/2021/Conference/Paper704/AnonReviewer[0-9]+", "description": "How your identity will be displayed."}}, "expdate": 1607428800000, "duedate": 1606752000000, "multiReply": false, "readers": ["everyone"], "tcdate": 1602538136950, "tmdate": 1606915776717, "super": "ICLR.cc/2021/Conference/-/Official_Review", "signatures": ["OpenReview.net"], "writers": ["ICLR.cc/2021/Conference"], "invitees": ["ICLR.cc/2021/Conference/Paper704/Reviewers", "OpenReview.net/Support"], "id": "ICLR.cc/2021/Conference/Paper704/-/Official_Review"}}}, {"id": "u926VQgaoci", "original": null, "number": 1, "cdate": 1603861308912, "ddate": null, "tcdate": 1603861308912, "tmdate": 1606782096070, "tddate": null, "forum": "zbEupOtJFF", "replyto": "zbEupOtJFF", "invitation": "ICLR.cc/2021/Conference/Paper704/-/Official_Review", "content": {"title": "\"Is Robustness Robust?\" It would appear so.", "review": "This paper proposes ImageNet-\\bar{C} which uses a smaller number of carefully chosen corruptions, compared to ImageNet-C. The authors try to argue that previous work is overfitting to ImageNet-C. They claim \"overfitting indeed occurs.\" Additionally, they propose \"Minimum Sample Distance,\" showing that they can predict generalization performance using feature embedding distances.\n\nI don't think they marshaled substantial, far-reaching evidence that \"overfitting indeed occurs.\" They rendered numerous corruptions from Huxtable, 2006; Gladman, 2016 (which I very much appreciate) and adversarially chose the worst corruptions. As a result, the best models performed worse by a few percent compared to ImageNet-C.\n_A drop is inevitable and expected given the adversarial selection. If the drop was consistently more than, say, 20%, then there might be strong evidence of overfitting._ Since the degradation for some techniques is small, this strikes me as evidence that by-and-large the community isn't overfitting. (Note it was evident to all that Patch Gaussian and ANT were specialized to noise corruptions.) \"Is Robustness Robust?\" It seems like the answer is \"yes\" but the authors are trying to argue that the answer is \"no.\"\n\nThis paper is fairly similar to _Increasing the Coverage and Balance of Robustness Benchmarks by Using Non-Overlapping Corruptions_ (submission #1101). If these papers have very different ratings, then there's a problem with this review process.\n\n\"AugMix, which introduces a broad array of both geometric and color augmentations\"\nNo it doesn't. It removes several color augmentations from AutoAugment and doesn't introduce any augmentation primitive beyond elementwise convex combinations.\n\n\"On other corruptions, the increase in error is even worse than the mean would suggest, and even broad augmentations like AugMix....\"\nAutoAugment is more broad; AugMix is narrower.\n\n\"Second, AutoAugment is the only tested augmentation scheme that was designed before the release of ImageNet-C\"\nAugMix uses a proper subset of AutoAugment's augmentations. It's not as though AugMix added in distortions to fit ImageNet-C; it removes augmentations because AA fits some of ImageNet-C's corruptions directly. This observation makes their overfitting case hard to maintain. \n\nAlso, if AutoAugment's full augmentation list is fair game for ImageNet-\\bar{C}, then the authors should train AugMix with the full set of augmentations and make that comparison; the generalization discrepancy would likely be even smaller were the augmentation sets made equal.\n\nFrom the \"Corruption robustness as a secondary learning task\" section:\n\"To mitigate overfitting, standard machine learning practice would dictate a training/validation/test set split; it is only the size and breadth of modern vision datasets that has allowed this to be neglected in certain cases recently.\"\n\"having a held-out test set that is not used during model development seems necessary.\"\n\"ImageNet-C has only 15 corruption types\"\n\"ImageNet-C could serve as a validation set and ImageNet-\\bar{C} could serve as a held-out test set\"\nEssentially, since the community lacks a validation set, ImageNet-C should become the validation set, and ImageNet-\\bar{C} should become the test set.\nThis section might be negligent or worse for not acknowledging the already existent ImageNet-C validation set. ImageNet-C provides a validation set with about half the corruptions of ImageNet-\\bar{C}. There are 19 available ImageNet-C corruptions, so the community already has a validation set.\n\nThe authors should cite or compare to other works that use feature distances to predict generalization. An example is \"The Frechet Distance of training and test distribution predicts the generalization gap.\"\n\nUpdate: \"Noisy Student and Assemble-ResNet use without removing overlapping augmentations, yet they test on ImageNet-C.\" This is a bad practice and I should hope the authors of this paper only have experiments where there is a train-test mismatch (otherwise we're not testing robustness to distribution shift).", "rating": "5: Marginally below acceptance threshold", "confidence": "5: The reviewer is absolutely certain that the evaluation is correct and very familiar with the relevant literature"}, "signatures": ["ICLR.cc/2021/Conference/Paper704/AnonReviewer3"], "readers": ["everyone"], "nonreaders": [], "writers": ["ICLR.cc/2021/Conference", "ICLR.cc/2021/Conference/Paper704/AnonReviewer3"], "details": {"replyCount": 0, "writable": false, "overwriting": [], "revisions": false, "forumContent": {"title": "On interaction between augmentations and corruptions in natural corruption robustness", "authorids": ["~Eric_Mintun1", "~Alexander_Kirillov1", "~Saining_Xie2"], "authors": ["Eric Mintun", "Alexander Kirillov", "Saining Xie"], "keywords": ["corruption robustness", "data augmentation", "perceptual similarity", "deep learning"], "abstract": "Invariance to a broad array of image corruptions, such as warping, noise, or color shifts, is an important aspect of building robust models in computer vision. Recently, several new data augmentations have been proposed that significantly improve performance on ImageNet-C, a benchmark of such corruptions. However, there is still a lack of basic understanding on the relationship between data augmentations and test-time corruptions. To this end, we develop a feature space for image transforms, and then use a new measure in this space between augmentations and corruptions called the Minimal Sample Distance to demonstrate there is a strong correlation between similarity and performance. We then investigate recent data augmentations and observe a significant degradation in corruption robustness when the test-time corruptions are sampled to be perceptually dissimilar from ImageNet-C in this feature space. Our results suggest that test error can be improved by training on perceptually similar augmentations, and data augmentations may risk overfitting to the existing benchmark. We hope our results and tools will allow for more robust progress towards improving robustness to image corruptions.", "code_of_ethics": "I acknowledge that I and all co-authors of this work have read and commit to adhering to the ICLR Code of Ethics", "paperhash": "mintun|on_interaction_between_augmentations_and_corruptions_in_natural_corruption_robustness", "one-sentence_summary": "We show that data augmentation improves error on images corrupted by transforms that are visually similar to the augmentations and that this leads to overfitting on a common corruption benchmark.", "pdf": "/pdf/a58ff8e728278c3fecd495d3fcd7da6e22f17e0a.pdf", "reviewed_version_(pdf)": "https://openreview.net/references/pdf?id=equE_LsqFX", "_bibtex": "@misc{\nmintun2021on,\ntitle={On interaction between augmentations and corruptions in natural corruption robustness},\nauthor={Eric Mintun and Alexander Kirillov and Saining Xie},\nyear={2021},\nurl={https://openreview.net/forum?id=zbEupOtJFF}\n}"}, "tags": [], "invitation": {"reply": {"content": {"title": {"order": 1, "value-regex": ".{0,500}", "description": "Brief summary of your review.", "required": true}, "review": {"order": 2, "value-regex": "[\\S\\s]{1,200000}", "description": "Please provide an evaluation of the quality, clarity, originality and significance of this work, including a list of its pros and cons (max 200000 characters). Add formatting using Markdown and formulas using LaTeX. For more information see https://openreview.net/faq . ***Please remember to file the Code-of-Ethics report. Once you submitted the review, a link to the report will be visible in the bottom right corner of your review.***", "required": true, "markdown": true}, "rating": {"order": 3, "value-dropdown": ["10: Top 5% of accepted papers, seminal paper", "9: Top 15% of accepted papers, strong accept", "8: Top 50% of accepted papers, clear accept", "7: Good paper, accept", "6: Marginally above acceptance threshold", "5: Marginally below acceptance threshold", "4: Ok but not good enough - rejection", "3: Clear rejection", "2: Strong rejection", "1: Trivial or wrong"], "required": true}, "confidence": {"order": 4, "value-radio": ["5: The reviewer is absolutely certain that the evaluation is correct and very familiar with the relevant literature", "4: The reviewer is confident but not absolutely certain that the evaluation is correct", "3: The reviewer is fairly confident that the evaluation is correct", "2: The reviewer is willing to defend the evaluation, but it is quite likely that the reviewer did not understand central parts of the paper", "1: The reviewer's evaluation is an educated guess"], "required": true}}, "forum": "zbEupOtJFF", "replyto": "zbEupOtJFF", "readers": {"description": "Select all user groups that should be able to read this comment.", "values": ["everyone"]}, "nonreaders": {"values": []}, "writers": {"values-copied": ["ICLR.cc/2021/Conference", "{signatures}"], "description": "How your identity will be displayed."}, "signatures": {"values-regex": "ICLR.cc/2021/Conference/Paper704/AnonReviewer[0-9]+", "description": "How your identity will be displayed."}}, "expdate": 1607428800000, "duedate": 1606752000000, "multiReply": false, "readers": ["everyone"], "tcdate": 1602538136950, "tmdate": 1606915776717, "super": "ICLR.cc/2021/Conference/-/Official_Review", "signatures": ["OpenReview.net"], "writers": ["ICLR.cc/2021/Conference"], "invitees": ["ICLR.cc/2021/Conference/Paper704/Reviewers", "OpenReview.net/Support"], "id": "ICLR.cc/2021/Conference/Paper704/-/Official_Review"}}}, {"id": "GXn9C7eLS5S", "original": null, "number": 5, "cdate": 1605729236729, "ddate": null, "tcdate": 1605729236729, "tmdate": 1605729236729, "tddate": null, "forum": "zbEupOtJFF", "replyto": "u926VQgaoci", "invitation": "ICLR.cc/2021/Conference/Paper704/-/Official_Comment", "content": {"title": "Response to reviewer 3", "comment": "Thank you for your expert, in-domain reviews. It is not our intent to formulate our paper primarily as proposing a new corruption benchmark, nor to suggest that existing augmentation methods are not making meaningful progress on improving corruption robustness. ImageNet-C has enabled rapid progress that has already allowed for several new insights into how to improve corruption robustness, using both augmentations and other methods. \n\nHowever, approaches to augmentation-corruption overlap differ from paper to paper. By developing a quantifiable measure for perceptual similarity, we aim to better understand how this overlap affects results. As additional methods are developed using benchmarks like ImageNet-C, we think it is important that scientists have concrete tools to determine why a method is working and if it should be expected to generalize beyond the tested benchmarks. For instance, recent work such as *The many faces of robustness: A critical analysis of out-of-distribution generalization* has shown that very broad, diverse augmentation distributions tend to generalize better to additional corruption benchmarks. Our work provides intuitions that support the case that such a broad augmentation method is needed.\n\nThanks to your comments we realize that our title may prime a reader in a way that we did not anticipate and we will change it. Note, though, that we have already not mentioned ImageNet-C-Bar by name in the abstract to deemphasize the dataset as a primary result, and we will clarify the text to deemphasize it further. Our intent was that discussion of overfitting was a case study in how to use our tools and not a judgment on the field as a whole, and we will make this explicit. \n\n**A drop is inevitable and expected given the adversarial selection.** Note that no adversarial selection is performed with respect to the augmentations, so a drop in accuracy is not guaranteed. Only CIFAR-10/Imagenet-C was used in the process of finding dissimilar corruptions, and we deliberately did not look at augmentation results before fixing the dataset selection method. We will highlight this in the text. We want to point out that even the best methods don\u2019t make a 20% improvement on ImageNet-C, so a 20% drop does not seem possible. We agree that the loss in error is small and that the methods studied here are still effective. However, we are arguing that care must be taken when comparing different augmentation methods. If a new method claims improvement over existing methods because of a small gain on ImageNet-C, then a small loss due to overfitting *is* important. \n\n**This paper is fairly similar to submission #1101.** We would draw a distinction with this submission, which does not study augmentations and appears to be arguing for flaws in ImageNet-C that require its replacement. We disagree with this point-of-view as we have already witnessed several new and exciting methods developed thanks to ImageNet-C. Instead, our goal is to provide tools to quantify how augmentation-corruption overlap affects corruption error, so that future methods developed using ImageNet-C can be better understood and compared.\n\n**AutoAugment is more broad; AugMix is narrower.** We would argue that, because AugMix can produce perceptually new effects by combining transforms (e.g. blur-like effects from superimposing differently shifted images, as shown in Figure 1), it may be broader than would be suggested by just counting individual base transforms. We will clarify this language.\n\n**The authors should train AugMix with the full set of augmentations.** We want to analyze these augmentation policies \u2018as is\u2019, since this is how they are often used in practice. This has already occurred with AutoAugment, which Noisy Student and Assemble-ResNet use without removing overlapping augmentations, yet they test on ImageNet-C.\n\n**Not acknowledging the already existent ImageNet-C validation set.** The validation set within ImageNet-C is quite different: these corruptions are perceptually similar to ImageNet-C corruptions, so we would not expect them to act as good validation for generalization to perceptually dissimilar corruptions. Since the goal is robustness to unknown image corruptions, generalization within perceptually similar transformations is unlikely to be sufficient. We will clarify these points and deemphasize ImageNet-C-Bar in this section.\n\n**The authors should cite or compare to other works that use feature distances to predict generalization.** Thank you for bringing this to our attention. We note that for corruption robustness, it is not optimal to make the training distribution as close as possible to some given test distribution, since the ultimate goal is robustness to unknown natural corruptions. An important part of our approach is that we did not simply use an existing measure and that MSD addresses this difference. We will provide the recommended citations and clarify this difference in the revision."}, "signatures": ["ICLR.cc/2021/Conference/Paper704/Authors"], "readers": ["everyone"], "nonreaders": [], "writers": ["ICLR.cc/2021/Conference", "ICLR.cc/2021/Conference/Paper704/Authors"], "details": {"replyCount": 0, "writable": false, "overwriting": [], "revisions": false, "forumContent": {"title": "On interaction between augmentations and corruptions in natural corruption robustness", "authorids": ["~Eric_Mintun1", "~Alexander_Kirillov1", "~Saining_Xie2"], "authors": ["Eric Mintun", "Alexander Kirillov", "Saining Xie"], "keywords": ["corruption robustness", "data augmentation", "perceptual similarity", "deep learning"], "abstract": "Invariance to a broad array of image corruptions, such as warping, noise, or color shifts, is an important aspect of building robust models in computer vision. Recently, several new data augmentations have been proposed that significantly improve performance on ImageNet-C, a benchmark of such corruptions. However, there is still a lack of basic understanding on the relationship between data augmentations and test-time corruptions. To this end, we develop a feature space for image transforms, and then use a new measure in this space between augmentations and corruptions called the Minimal Sample Distance to demonstrate there is a strong correlation between similarity and performance. We then investigate recent data augmentations and observe a significant degradation in corruption robustness when the test-time corruptions are sampled to be perceptually dissimilar from ImageNet-C in this feature space. Our results suggest that test error can be improved by training on perceptually similar augmentations, and data augmentations may risk overfitting to the existing benchmark. We hope our results and tools will allow for more robust progress towards improving robustness to image corruptions.", "code_of_ethics": "I acknowledge that I and all co-authors of this work have read and commit to adhering to the ICLR Code of Ethics", "paperhash": "mintun|on_interaction_between_augmentations_and_corruptions_in_natural_corruption_robustness", "one-sentence_summary": "We show that data augmentation improves error on images corrupted by transforms that are visually similar to the augmentations and that this leads to overfitting on a common corruption benchmark.", "pdf": "/pdf/a58ff8e728278c3fecd495d3fcd7da6e22f17e0a.pdf", "reviewed_version_(pdf)": "https://openreview.net/references/pdf?id=equE_LsqFX", "_bibtex": "@misc{\nmintun2021on,\ntitle={On interaction between augmentations and corruptions in natural corruption robustness},\nauthor={Eric Mintun and Alexander Kirillov and Saining Xie},\nyear={2021},\nurl={https://openreview.net/forum?id=zbEupOtJFF}\n}"}, "tags": [], "invitation": {"reply": {"content": {"title": {"order": 0, "value-regex": ".{1,500}", "description": "Brief summary of your comment.", "required": true}, "comment": {"order": 1, "value-regex": "[\\S\\s]{1,5000}", "description": "Your comment or reply (max 5000 characters). Add formatting using Markdown and formulas using LaTeX. For more information see https://openreview.net/faq", "required": true, "markdown": true}}, "forum": "zbEupOtJFF", "readers": {"description": "Who your comment will be visible to. If replying to a specific person make sure to add the group they are a member of so that they are able to see your response", "values-dropdown": ["ICLR.cc/2021/Conference/Program_Chairs", "ICLR.cc/2021/Conference/Paper704/Area_Chairs"], "default": ["ICLR.cc/2021/Conference/Program_Chairs", "ICLR.cc/2021/Conference/Paper704/Area_Chairs"]}, "writers": {"values-copied": ["ICLR.cc/2021/Conference", "{signatures}"]}, "signatures": {"values-regex": "ICLR.cc/2021/Conference/Paper704/AnonReviewer[0-9]+|ICLR.cc/2021/Conference/Paper704/Authors|ICLR.cc/2021/Conference/Paper704/Area_Chair[0-9]+|ICLR.cc/2021/Conference/Program_Chairs", "description": "How your identity will be displayed."}}, "expdate": 1610649480000, "final": [], "readers": ["everyone"], "nonreaders": [], "invitees": ["ICLR.cc/2021/Conference", "ICLR.cc/2021/Conference/Paper704/Area_Chairs", "ICLR.cc/2021/Conference/Program_Chairs", "OpenReview.net/Support"], "noninvitees": [], "tcdate": 1601923868088, "tmdate": 1610649509835, "super": "ICLR.cc/2021/Conference/-/Comment", "signatures": ["ICLR.cc/2021/Conference"], "writers": ["ICLR.cc/2021/Conference"], "id": "ICLR.cc/2021/Conference/Paper704/-/Official_Comment"}}}, {"id": "HgSJMx36pvW", "original": null, "number": 4, "cdate": 1605728803843, "ddate": null, "tcdate": 1605728803843, "tmdate": 1605728803843, "tddate": null, "forum": "zbEupOtJFF", "replyto": "2OMZK3oJOhh", "invitation": "ICLR.cc/2021/Conference/Paper704/-/Official_Comment", "content": {"title": "Response to reviewer 2", "comment": "Thank you for recognizing the novelness of quantifying the relationship between perceptual similarity and corruption error, as well as the value of MSD over MMD. You raise several excellent points that we address below.\n\n**This notion of the relation between augmentations and test-time corruptions does not seem very surprising.** We agree that the relation between augmentations and test-time corruptions is not unknown, but what we find surprising is that it is nevertheless often overlooked in analyses. This is what we intended to emphasize in stating \u201cwe empirically show an intuitive yet **surprisingly overlooked** finding\u201d. In particular, the approaches used to address the problem are usually ad hoc or missing entirely, and often differ substantially from paper to paper. For example, AugMix removes individual augmentations with exact overlap; Patch Gaussian is perceptually similar to the noise corruptions, but instead of modifying the augmentation tests on a subset of corruptions; others still, such as Noisy Student or Assemble-ResNet, use AutoAugment without removing overlapping augmentations but still report ImageNet-C results. This makes it somewhat challenging to fairly compare different robustness-improving methods. By quantifying the relationship and defining an explicit measure of augmentation-corruption similarity, our goal is to provide a tool to better answer \u2018why does this work?\u2019 and \u2018will this generalize beyond the tested benchmarks?\u2019 for methods proposed in the future. \n\n**If MSD of stylized transforms is large (which intuitively seems so), then it will mean that MSD is not a reliable metric in such a case. Was this studied?** We agree SIN would provide an interesting perspective on our method. Unfortunately, there is no CIFAR-10 version of SIN, and it is too computationally expensive to perform the analysis of section 4 on ImageNet. However, if SIN had large MSD despite its good performance, it could be interpreted as a good sign for SIN: if it performs well on a benchmark without being perceptually similar to it, one might expect that it is more likely to generalize to other perceptually dissimilar corruptions as well. More generally, we don\u2019t expect that perceptual similarity is the only cause of improved corruption error (e.g., Yin et al 2019 study the importance of frequency dependence), only that perceptual similarity is particularly salient for predicting generalization to dissimilar corruptions. We will reinforce this perspective in the paper.\n\n**This suggests that measures should perhaps ideally be asymmetric.** Your intuition regarding an asymmetric measure of perceptual similarity is correct, and MSD is indeed asymmetric. We mention this in section 3 when comparing to the symmetric MMD measure. Thank you for pointing out the improper usage of the word \u2018metric\u2019 to describe MSD: it is a distance in the colloquial sense and not in the formal metric sense, and we did not mean to imply MSD is symmetric. We will remove reference to a metric in the revision.\n\n**The metric should be robust i.e. shouldn\u2019t be sensitive to the choice of feature extractor.** We have chosen to use ResNet since it is widely used for robustness benchmarks in the literature, so we reuse it for simplicity. We agree the measure should be robust to changes in the architecture of the feature extractor. We have results using VGG (modified for CIFAR-10) as the feature extractor but see no qualitative changes in how different corruptions and augmentations correlate. We will add plots for this in the revision and have included a table of correlations below for comparison.\n\n**The practical utility of ImageNet-C-bar seems limited and unclear.** At the moment, ImageNet-C is the most common benchmark for studying corruption robustness, and we expect that it will remain so since it is effective and simple to use. Due to the issues comparing methods discussed in the first paragraph above, we think having an independent check on ImageNet-C performance is itself valuable. More generally, our measure of perceptual similarity could be applied to generate dissimilar transforms for future benchmarks. In this sense, it is a general purpose tool for studying if a method will generalize beyond a tested corruption benchmark.\n\n**Comparison of Spearman\u2019s coefficient for different feature extractors.**\n\n|Corruption | WRS-40-2 | VGG-19-BN |\n|---------|-------|------|\n| Gaussian Noise | 0.76 | 0.71 |\n| Shot Noise | 0.83 | 0.78 |\n| Impulse Noise | 0.90 | 0.92 |\n| Motion Blur | 0.86 | 0.81 |\n| Defocus Blur | 0.83 | 0.78 |\n| Zoom Blur | 0.77 |0.68 |\n| Glass Blur | 0.69 | 0.66 | \n| Brightness | 0.27 | 0.08 |\n| Fog | 0.68 | 0.60 |\n| Frost | 0.66 | 0.66 |\n| Snow | 0.65 | 0.53 |\n| Contrast | 0.66 | 0.65 |\n| Pixelate | 0.35 | 0.29 |\n| JPEG Compression | 0.33 | 0.26 |\n| Elastic Transform | 0.77 | 0.74 |\n"}, "signatures": ["ICLR.cc/2021/Conference/Paper704/Authors"], "readers": ["everyone"], "nonreaders": [], "writers": ["ICLR.cc/2021/Conference", "ICLR.cc/2021/Conference/Paper704/Authors"], "details": {"replyCount": 0, "writable": false, "overwriting": [], "revisions": false, "forumContent": {"title": "On interaction between augmentations and corruptions in natural corruption robustness", "authorids": ["~Eric_Mintun1", "~Alexander_Kirillov1", "~Saining_Xie2"], "authors": ["Eric Mintun", "Alexander Kirillov", "Saining Xie"], "keywords": ["corruption robustness", "data augmentation", "perceptual similarity", "deep learning"], "abstract": "Invariance to a broad array of image corruptions, such as warping, noise, or color shifts, is an important aspect of building robust models in computer vision. Recently, several new data augmentations have been proposed that significantly improve performance on ImageNet-C, a benchmark of such corruptions. However, there is still a lack of basic understanding on the relationship between data augmentations and test-time corruptions. To this end, we develop a feature space for image transforms, and then use a new measure in this space between augmentations and corruptions called the Minimal Sample Distance to demonstrate there is a strong correlation between similarity and performance. We then investigate recent data augmentations and observe a significant degradation in corruption robustness when the test-time corruptions are sampled to be perceptually dissimilar from ImageNet-C in this feature space. Our results suggest that test error can be improved by training on perceptually similar augmentations, and data augmentations may risk overfitting to the existing benchmark. We hope our results and tools will allow for more robust progress towards improving robustness to image corruptions.", "code_of_ethics": "I acknowledge that I and all co-authors of this work have read and commit to adhering to the ICLR Code of Ethics", "paperhash": "mintun|on_interaction_between_augmentations_and_corruptions_in_natural_corruption_robustness", "one-sentence_summary": "We show that data augmentation improves error on images corrupted by transforms that are visually similar to the augmentations and that this leads to overfitting on a common corruption benchmark.", "pdf": "/pdf/a58ff8e728278c3fecd495d3fcd7da6e22f17e0a.pdf", "reviewed_version_(pdf)": "https://openreview.net/references/pdf?id=equE_LsqFX", "_bibtex": "@misc{\nmintun2021on,\ntitle={On interaction between augmentations and corruptions in natural corruption robustness},\nauthor={Eric Mintun and Alexander Kirillov and Saining Xie},\nyear={2021},\nurl={https://openreview.net/forum?id=zbEupOtJFF}\n}"}, "tags": [], "invitation": {"reply": {"content": {"title": {"order": 0, "value-regex": ".{1,500}", "description": "Brief summary of your comment.", "required": true}, "comment": {"order": 1, "value-regex": "[\\S\\s]{1,5000}", "description": "Your comment or reply (max 5000 characters). Add formatting using Markdown and formulas using LaTeX. For more information see https://openreview.net/faq", "required": true, "markdown": true}}, "forum": "zbEupOtJFF", "readers": {"description": "Who your comment will be visible to. If replying to a specific person make sure to add the group they are a member of so that they are able to see your response", "values-dropdown": ["ICLR.cc/2021/Conference/Program_Chairs", "ICLR.cc/2021/Conference/Paper704/Area_Chairs"], "default": ["ICLR.cc/2021/Conference/Program_Chairs", "ICLR.cc/2021/Conference/Paper704/Area_Chairs"]}, "writers": {"values-copied": ["ICLR.cc/2021/Conference", "{signatures}"]}, "signatures": {"values-regex": "ICLR.cc/2021/Conference/Paper704/AnonReviewer[0-9]+|ICLR.cc/2021/Conference/Paper704/Authors|ICLR.cc/2021/Conference/Paper704/Area_Chair[0-9]+|ICLR.cc/2021/Conference/Program_Chairs", "description": "How your identity will be displayed."}}, "expdate": 1610649480000, "final": [], "readers": ["everyone"], "nonreaders": [], "invitees": ["ICLR.cc/2021/Conference", "ICLR.cc/2021/Conference/Paper704/Area_Chairs", "ICLR.cc/2021/Conference/Program_Chairs", "OpenReview.net/Support"], "noninvitees": [], "tcdate": 1601923868088, "tmdate": 1610649509835, "super": "ICLR.cc/2021/Conference/-/Comment", "signatures": ["ICLR.cc/2021/Conference"], "writers": ["ICLR.cc/2021/Conference"], "id": "ICLR.cc/2021/Conference/Paper704/-/Official_Comment"}}}, {"id": "Myv5jMQsdbR", "original": null, "number": 3, "cdate": 1605728337699, "ddate": null, "tcdate": 1605728337699, "tmdate": 1605728337699, "tddate": null, "forum": "zbEupOtJFF", "replyto": "GECfZ-aPmhQ", "invitation": "ICLR.cc/2021/Conference/Paper704/-/Official_Comment", "content": {"title": "Response to reviewer 4", "comment": "Thank you for recognizing the value of our work that quantifies augmentation-corruption similarity and measures generalization to perceptually dissimilar corruptions. You raise several important points that we address below.\n\n**This correlation isn\u2019t true for all augmentations.** It is true that the correlation between MSD and error does not hold in all cases. We do not think this is surprising: perceptual similarity is only one of multiple interactions between augmentations and corruptions (e.g., the frequency dependence of Yin et al 2019 is another). One of the goals of this work is to add to the set of tools researchers can use to answer \u2018why does this work?\u2019 and \u2018will this generalize beyond the tested benchmarks?\u2019 for future robustness-improving methods. MSD is one such tool. We agree this argument should be more explicit and will provide a table of all correlations in the main text so that it is clearer how many correlate well.\n\n**The paper argues that AutoAugment \"overfits\" while AugMix doesn't.** Thank you for pointing out that our language at the end of section 4 is confusing: we do not actually intend to imply this. Indeed, at the bottom of page 7, we argue that despite including exact overlaps with ImageNet-C, AutoAugment actually generalizes the best, since it shows the least degradation on the new corruptions. Section 4 seeks to establish that our measure captures intuitively meaningful information about perceptual similarity, including both exact overlaps like in AutoAugment and perceptually similar ones like for AugMix and Patch Gaussian. We will add additional clarification of this point. Furthermore, in this context our goal is not to argue that any single method like Patch Guassian is unuseful. We agree that Patch Gaussian might be successfully combined with a policy like RandAugment, and that Patch Gaussian may be performant on some corruptions for reasons other than perceptual similarity.\n\n**Brightness is used to show that Patch Gaussian has \u201coverfit\u201d to the noise corruptions in the ImageNet-C benchmark.** We do not make this argument in this way. In Appendix A, we discuss MMD, for which the Spearman coefficient is low for all corruptions (this is not MSD, which we use in the main text). Our argument here needs only that Patch Gaussian\u2019s MMD is much lower for these corruptions than for other types. This suggests Patch Gaussian is perceptually similar to only the noise corruptions. Broader augmentation policies, which have components perceptually similar to many dissimilar corruptions, will have low MMD to none of them. Brightness and contrast are included as examples of this second statement, since AutoAugment contains these transforms explicitly but does not have lower MMD here than other augmentations. The behavior of MMD for Patch Gaussian on brightness explicitly is not critical for our argument: it is large for all non-noise corruptions. We will clarify this in the text of Appendix A and include additional plots.\n\n**Why was AutoAugment, but not RandAugment tested?** We benchmark AutoAugment because many robustness-improving augmentation papers use AutoAugment but not RandAugment as a component or baseline. We are working on RandAugment, but are having reproducibility problems (similar to github.com/ildoonet/pytorch-randaugment). We will continue working on it and try our best to include results in the revision. Since RandAugment is designed to improve search efficiency but otherwise uses the same individual transforms and compositing method as AutoAugment, we expect similar results.\n\n**It may not make sense to compare single augmentations (such as Patch Gaussian) with augmentation policies.** MSD is designed to handle both individual augmentations and policies over many augmentations, and thus it makes sense to apply it to both. We want a unified approach that can be used to study future augmentation strategies even if there is not a clear division into a policy over separate individual augmentations. Our results also provide quantifiable evidence supporting the intuition you suggest here: broad augmentation policies do appear to perform better than single augmentations.\n\n**It seems like there\u2019s no evidence of overfitting for augmentation policies that encourage a diversity of augmentations.** While diverse augmentation policies perform much better, we do not agree that there is no evidence of overfitting. As noted in section 5, there are several new corruptions that AugMix and AutoAugment perform no better than baseline on. \n\n**If current methods have indeed overfit, why won\u2019t we also overfit to the new benchmark\u2019s corruptions?** We agree this could occur. However, it is scientifically advantageous if researchers are aware of the problem and have the tools to measure it. Additionally, our method of finding dissimilar corruptions could be applied again, were there need to identify poor generalization beyond our own or future datasets."}, "signatures": ["ICLR.cc/2021/Conference/Paper704/Authors"], "readers": ["everyone"], "nonreaders": [], "writers": ["ICLR.cc/2021/Conference", "ICLR.cc/2021/Conference/Paper704/Authors"], "details": {"replyCount": 0, "writable": false, "overwriting": [], "revisions": false, "forumContent": {"title": "On interaction between augmentations and corruptions in natural corruption robustness", "authorids": ["~Eric_Mintun1", "~Alexander_Kirillov1", "~Saining_Xie2"], "authors": ["Eric Mintun", "Alexander Kirillov", "Saining Xie"], "keywords": ["corruption robustness", "data augmentation", "perceptual similarity", "deep learning"], "abstract": "Invariance to a broad array of image corruptions, such as warping, noise, or color shifts, is an important aspect of building robust models in computer vision. Recently, several new data augmentations have been proposed that significantly improve performance on ImageNet-C, a benchmark of such corruptions. However, there is still a lack of basic understanding on the relationship between data augmentations and test-time corruptions. To this end, we develop a feature space for image transforms, and then use a new measure in this space between augmentations and corruptions called the Minimal Sample Distance to demonstrate there is a strong correlation between similarity and performance. We then investigate recent data augmentations and observe a significant degradation in corruption robustness when the test-time corruptions are sampled to be perceptually dissimilar from ImageNet-C in this feature space. Our results suggest that test error can be improved by training on perceptually similar augmentations, and data augmentations may risk overfitting to the existing benchmark. We hope our results and tools will allow for more robust progress towards improving robustness to image corruptions.", "code_of_ethics": "I acknowledge that I and all co-authors of this work have read and commit to adhering to the ICLR Code of Ethics", "paperhash": "mintun|on_interaction_between_augmentations_and_corruptions_in_natural_corruption_robustness", "one-sentence_summary": "We show that data augmentation improves error on images corrupted by transforms that are visually similar to the augmentations and that this leads to overfitting on a common corruption benchmark.", "pdf": "/pdf/a58ff8e728278c3fecd495d3fcd7da6e22f17e0a.pdf", "reviewed_version_(pdf)": "https://openreview.net/references/pdf?id=equE_LsqFX", "_bibtex": "@misc{\nmintun2021on,\ntitle={On interaction between augmentations and corruptions in natural corruption robustness},\nauthor={Eric Mintun and Alexander Kirillov and Saining Xie},\nyear={2021},\nurl={https://openreview.net/forum?id=zbEupOtJFF}\n}"}, "tags": [], "invitation": {"reply": {"content": {"title": {"order": 0, "value-regex": ".{1,500}", "description": "Brief summary of your comment.", "required": true}, "comment": {"order": 1, "value-regex": "[\\S\\s]{1,5000}", "description": "Your comment or reply (max 5000 characters). 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We fully agree that the result is intuitive, yet published works often ignore the intuition and remove only augmentations that exactly match corruptions. In particular, corruption robustness provides a new and exciting task, and we expect increased effort to improve performance on benchmarks such as ImageNet-C. It will be very important that future reviewers and researchers have quantitative tools on hand to accurately judge and understand these proposals. Regarding your questions:\n\n**What are the augmentations that were used while training the network used to extract features for the metric?** The augmentations used to train the feature extractor are the default ones for CIFAR-10 or ImageNet. This is random crop and horizontal flip for CIFAR-10, and random crop, resize, and horizontal flip for ImageNet (e.g., as used by torchvision for training models https://github.com/pytorch/vision).\n\n**Have you verified that the metric is robust to different architectures and the same conclusion holds?** We fully agree that the ability to work with different feature extractors is crucial for the framework. We have results using VGG (modified for CIFAR-10) as the feature extractor and find no qualitative differences in how different corruptions and augmentations correlate. We will add plots for this in the revision and have included a table of correlations below for comparison.\n\n**Do we find any non-intuitive pairs of corruptions which are similar?** Yes! One such example is presented at the bottom of page 6. We found glass blur acts more like a noise corruption than a blur corruption. This may be because the glass blur algorithm involves permuting pixel values spatially in addition to gaussian blurring. Another is that the contrast corruption is improved by geometric augmentations more than by equalize or auto-contrast augmentations, which are explicitly contrast changing. This may be because equalize and auto-contrast increase contrast, while the contrast corruption and blurring effects from superimposing geometric augmentations decrease contrast. This is an example of the danger of relying on naming or intuition to remove an overlapping augmentation: naively auto-contrast and contrast would be very similar, but we actually find they behave quite differently! 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{"poster":"Edward VII","date":"2016-10-24T17:22:22.294+0000","title":"3v3 Team High Platin/Diamond, Diamond Rush 3v3","subforum":"Clans & Teams","up_votes":1,"down_votes":0,"body":"Hallo, \r\n\r\nich möchte diese Season noch Diamond in 3v3 machen. Ich werde die Rolle als APCarry übernehmen und suche einen Toplaner und einen Jungler.\r\n\r\nAddet mich einfach: Edward VII\r\n\r\nMfG,\r\nEdward VII","replies":[]} |
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"sn12.23:0.1": "Verbundene Lehrreden 12",
"sn12.23:0.2": "3. Die zehn Kräfte",
"sn12.23:0.3": "23. Wesentliche Bedingungen ",
"sn12.23:1.1": "In Sāvatthī. ",
"sn12.23:1.2": "„Mönche und Nonnen, ich sage, dass die Makel für jemanden enden, der weiß und sieht, nicht für jemanden, der nicht weiß und nicht sieht. ",
"sn12.23:1.3": "Für jemanden, der was weiß und sieht? ",
"sn12.23:1.4": "‚Solcherart ist Form, so entsteht sie, so endet sie. ",
"sn12.23:1.5": "Solcherart ist Gefühl … ",
"sn12.23:1.6": "Solcherart ist Wahrnehmung … ",
"sn12.23:1.7": "Solcherart sind Entscheidungen … ",
"sn12.23:1.8": "Solcherart ist Bewusstsein, so entsteht es, so endet es.‘ ",
"sn12.23:1.9": "Die Makel enden für jemanden, der das weiß und sieht. ",
"sn12.23:2.1": "Ich sage, dieses Wissen um das Enden hat eine wesentliche Bedingung, es ist nicht ohne wesentliche Bedingung. ",
"sn12.23:2.2": "Und was ist diese? ",
"sn12.23:2.3": "Ihr solltet sagen: ‚Freiheit‘. ",
"sn12.23:2.4": "Ich sage, Freiheit hat eine wesentliche Bedingung, sie ist nicht ohne wesentliche Bedingung. ",
"sn12.23:2.5": "Und was ist diese? ",
"sn12.23:2.6": "Ihr solltet sagen: ‚Abstand nehmen‘. ",
"sn12.23:2.7": "Ich sage, Abstand nehmen hat eine wesentliche Bedingung. ",
"sn12.23:2.8": "Und was ist diese? ",
"sn12.23:2.9": "Ihr solltet sagen: ‚Ernüchterung‘. ",
"sn12.23:2.10": "Ich sage, Ernüchterung hat eine wesentliche Bedingung. ",
"sn12.23:2.11": "Und was ist diese? ",
"sn12.23:2.12": "Ihr solltet sagen: ‚Wirklichkeitsgemäß erkennen und sehen‘. ",
"sn12.23:2.13": "Ich sage, wirklichkeitsgemäßes Erkennen und Sehen hat eine wesentliche Bedingung. ",
"sn12.23:2.14": "Und was ist diese? ",
"sn12.23:2.15": "Ihr solltet sagen: ‚Versenkung‘. ",
"sn12.23:2.16": "Ich sage, Versenkung hat eine wesentliche Bedingung. ",
"sn12.23:3.1": "Und was ist diese? ",
"sn12.23:3.2": "Ihr solltet sagen: ‚Wonne‘. ",
"sn12.23:3.3": "Ich sage, Wonne hat eine wesentliche Bedingung. ",
"sn12.23:3.4": "Und was ist diese? ",
"sn12.23:3.5": "Ihr solltet sagen: ‚Stille‘. ",
"sn12.23:3.6": "Ich sage, Stille hat eine wesentliche Bedingung. ",
"sn12.23:3.7": "Und was ist diese? ",
"sn12.23:3.8": "Ihr solltet sagen: ‚Ekstase‘. ",
"sn12.23:3.9": "Ich sage, Ekstase hat eine wesentliche Bedingung. ",
"sn12.23:3.10": "Und was ist diese? ",
"sn12.23:3.11": "Ihr solltet sagen: ‚Freude‘. ",
"sn12.23:3.12": "Ich sage, Freude hat eine wesentliche Bedingung. ",
"sn12.23:3.13": "Und was ist diese? ",
"sn12.23:3.14": "Ihr solltet sagen: ‚Vertrauen‘. ",
"sn12.23:3.15": "Ich sage, Vertrauen hat eine wesentliche Bedingung. ",
"sn12.23:4.1": "Und was ist diese? ",
"sn12.23:4.2": "Ihr solltet sagen: ‚Leiden‘. ",
"sn12.23:4.3": "Ich sage, Leiden hat eine wesentliche Bedingung. ",
"sn12.23:4.4": "Und was ist diese? ",
"sn12.23:4.5": "Ihr solltet sagen: ‚Wiedergeburt‘. ",
"sn12.23:4.6": "Ich sage, Wiedergeburt hat eine wesentliche Bedingung. ",
"sn12.23:4.7": "Und was ist diese? ",
"sn12.23:4.8": "Ihr solltet sagen: ‚Fortgesetztes Dasein‘. ",
"sn12.23:4.9": "Ich sage, fortgesetztes Dasein hat eine wesentliche Bedingung. ",
"sn12.23:4.10": "Und was ist diese? ",
"sn12.23:4.11": "Ihr solltet sagen: ‚Ergreifen‘. ",
"sn12.23:4.12": "Ich sage, Ergreifen hat eine wesentliche Bedingung. ",
"sn12.23:4.13": "Und was ist diese? ",
"sn12.23:4.14": "Ihr solltet sagen: ‚Verlangen‘. ",
"sn12.23:4.15": "Ich sage, Verlangen hat eine wesentliche Bedingung. ",
"sn12.23:5.1": "Und was ist diese? ",
"sn12.23:5.2": "Ihr solltet sagen: ‚Gefühl‘. … ",
"sn12.23:5.3": "Ihr solltet sagen: ‚Berührung‘. … ",
"sn12.23:5.4": "Ihr solltet sagen: ‚Die sechs Sinnesfelder‘. … ",
"sn12.23:5.5": "Ihr solltet sagen: ‚Name und Form‘. … ",
"sn12.23:5.6": "Ihr solltet sagen: ‚Bewusstsein‘. … ",
"sn12.23:5.7": "Ihr solltet sagen: ‚Entscheidungen‘. … ",
"sn12.23:5.8": "Ich sage, Entscheidungen haben eine wesentliche Bedingung, sie sind nicht ohne wesentliche Bedingung. ",
"sn12.23:5.9": "Und was ist die wesentliche Bedingung für Entscheidungen? ",
"sn12.23:5.10": "Ihr solltet sagen: ‚Unwissenheit‘. ",
"sn12.23:6.1": "So ist Unwissenheit eine wesentliche Bedingung für Entscheidungen. ",
"sn12.23:6.2": "Entscheidungen sind eine wesentliche Bedingung für Bewusstsein. ",
"sn12.23:6.3": "Bewusstsein ist eine wesentliche Bedingung für Name und Form. ",
"sn12.23:6.4": "Name und Form sind wesentliche Bedingungen für die sechs Sinnesfelder. ",
"sn12.23:6.5": "Die sechs Sinnesfelder sind wesentliche Bedingungen für Berührung. ",
"sn12.23:6.6": "Berührung ist eine wesentliche Bedingung für Gefühl. ",
"sn12.23:6.7": "Gefühl ist eine wesentliche Bedingung für Verlangen. ",
"sn12.23:6.8": "Verlangen ist eine wesentliche Bedingung für Ergreifen. ",
"sn12.23:6.9": "Ergreifen ist eine wesentliche Bedingung für fortgesetztes Dasein. ",
"sn12.23:6.10": "Fortgesetztes Dasein ist eine wesentliche Bedingung für Wiedergeburt. ",
"sn12.23:6.11": "Wiedergeburt ist eine wesentliche Bedingung für Leiden. ",
"sn12.23:6.12": "Leiden ist eine wesentliche Bedingung für Vertrauen. ",
"sn12.23:6.13": "Vertrauen ist eine wesentliche Bedingung für Freude. ",
"sn12.23:6.14": "Freude ist eine wesentliche Bedingung für Ekstase. ",
"sn12.23:6.15": "Ekstase ist eine wesentliche Bedingung für Stille. ",
"sn12.23:6.16": "Stille ist eine wesentliche Bedingung für Wonne. ",
"sn12.23:6.17": "Wonne ist eine wesentliche Bedingung für Versenkung. ",
"sn12.23:6.18": "Versenkung ist eine wesentliche Bedingung für wirklichkeitsgemäßes Erkennen und Sehen. ",
"sn12.23:6.19": "Wirklichkeitsgemäßes Erkennen und Sehen ist eine wesentliche Bedingung für Ernüchterung. ",
"sn12.23:6.20": "Ernüchterung ist eine wesentliche Bedingung dafür, Abstand zu nehmen. ",
"sn12.23:6.21": "Abstand nehmen ist eine wesentliche Bedingung für Freiheit. ",
"sn12.23:6.22": "Freiheit ist eine wesentliche Bedingung für das Wissen um das Enden. ",
"sn12.23:7.1": "Es ist, wie wenn es auf einem Berggipfel stark regnet, und das Wasser fließt bergab und füllt die Hohlräume, Spalten und Bäche. Wenn sie voll werden, füllen sie die Teiche. Die Teiche füllen die Seen, die Seen füllen die Flüsse, und die Flüsse füllen die Ströme. Und wenn die Ströme voll werden, füllen sie den Ozean. ",
"sn12.23:8.1": "Ebenso ist Unwissenheit eine wesentliche Bedingung für Entscheidungen. … Freiheit ist eine wesentliche Bedingung für das Wissen um das Enden.“ "
}
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{"forum_title": "RÖFL", "id": "7013", "title": "Svona á að nota þetta", "url": "http://www.live2cruize.com/spjall/showthread.php/7013-Svona-á-að-nota-þetta", "posts": [{"user_name": "Raggi M5", "text": "Ætli einhver hérna á spjallinu væri til í þetta á nýja STI inum sínum <<<icon_question.gif>>> <<<icon_biggrin.gif>>> \n\nhttp://videos.streetfire.net/Player....04AF&kw=73&p=0", "date": "2005-08-28 22:47:00", "post_id": 1}, {"user_name": "imported_no_fear", "text": "öss", "date": "2005-08-28 23:17:00", "post_id": 2}, {"user_name": "APEXi", "text": "öss...", "date": "2005-08-28 23:24:00", "post_id": 3}, {"user_name": "Kruder", "text": "hrútleiðinlegt vídjó", "date": "2005-08-28 23:25:00", "post_id": 4}, {"user_name": "Magnific0", "text": "ÖSS", "date": "2005-08-28 23:25:00", "post_id": 5}, {"user_name": "Coulomb", "text": "Þessi maður er svo gott sem réttdræpur í minni bók!!!", "date": "2005-08-28 23:48:00", "post_id": 6}], "file_urls": ["http://live2cruize.com/spjall/images/smilies/icon_question.gif", "http://live2cruize.com/spjall/images/smilies/icon_biggrin.gif"], "date": "2005-08-28 22:47:00", "files": [{"url": "http://live2cruize.com/spjall/images/smilies/icon_question.gif", "path": "full/d4aa6abfc828d9b71e5ecfd87a602b8dba689dc1.gif", "checksum": "0518596a4eb94c32a2b2ed898bdc3549"}, {"url": "http://live2cruize.com/spjall/images/smilies/icon_biggrin.gif", "path": "full/24620e8136e134c2ee38603a088528683844d88a.gif", "checksum": "f970a6591668c625e4b9dbd3b7a450d7"}]} |
{"category": "Original Proceeding", "status": "Notice in Lieu of Remittitur Issued/Case Closed", "case_url": "http://caseinfo.nvsupremecourt.us/public/caseView.do?csIID=9905", "caption": "MICHAELS VS. DIST. CT. (MICHAELS)", "type": "Civil", "case_no": "42054", "subtype": "Proper Person Writ Petition", "parties": [{"Represented By": "In Proper Person", "Role": "Petitioner", "Party Name": "Barry Michaels"}, {"Represented By": "In Proper Person", "Role": "Real Party in Interest", "Party Name": "Holly Brand"}, {"Represented By": "NA", "Role": "Real Party in Interest", "Party Name": "Holly Michaels"}, {"Represented By": "NA", "Role": "Respondent", "Party Name": "The Eighth Judicial District Court of the State of Nevada, in and for the County of Clark"}, {"Represented By": "NA", "Role": "Respondent", "Party Name": "The Honorable Jennifer Elliott, District Judge, Family Court Division"}], "docket": [{"Date": "09/17/2003", "Type/Subtype": "Filing Fee - Filing Fee due", "Description": "Filing Fee due. 04/08/04 Order-fn6: we conclude that petitioner has demonstrated that good cause exists to waive the filing fee in this matter and therefore waive the filing fee requirement."}, {"Type/Subtype": "Petition/Writ - Proper Person Petition for Writ", "Description": "Filed Proper Person Petition for Writ. Petition for Writ of Mandamus.", "Document Number": "03-15562", "Document URL": "/document/view.do?csNameID=9905&csIID=9905&deLinkID=198784&sireDocumentNumber=03-15562", "Date": "09/17/2003", "Pending?": "NA"}, {"Date": "09/17/2003", "Type/Subtype": "Notice/Outgoing - Notice to Pay Supreme Court Filing Fee", "Description": "Issued Notice to Pay Supreme Court Filing Fee. Due Date: 10 days"}, {"Date": "09/24/2003", "Type/Subtype": "Motion - Proper Person Motion", "Description": "Received Proper Person Motion. Motion to Proceed on Writ of Mandamus in Forma Pauperis."}, {"Date": "10/14/2003", "Type/Subtype": "Other Incoming Document - Proper Person Document", "Description": "Received Proper Person Document. Opposition to Petition for Writ of Mandamus."}, {"Type/Subtype": "Order/Dispositional - Order Denying Petition", "Description": "Filed Order Denying Petition. Order of Affirmance (No. 41433) and Denying Petition for Writ of Mandamus (No. 42054). Docket No. 41433 is a proper person appeal from a post-decree district court order denying appellant's motion to modify the child custody arrangement. Docket No. 42054 is an original proper person petition for a writ of mandamus challenging a district court order concerning contempt. Having reviewed the documents before us, we conclude that the district court did not abuse its discretion when it denied appellant's motion to modify the child custody arrangement. We further conclude that the portion of the district court's order directing appellant to pay $150 per month on the $3,266.85 total attorney fees award is not substantively appealable because the district court merely structured a payment schedule in enforcing a prior order awarding fees and interest. It appears that appellant did not appeal from the prior order. We decline to consider that issue on appeal. Order of Affirmance. With respect to the petition for a writ of mandamus, we have considered the petition, and we are not satisfied that our intervention by way of extraordinary relief is warranted at this time. \"We deny the petition.\" fn6[Although appellant and respondent were not granted leave to file papers in proper person, see NRAP 46(b), we have considered the proper person documents received from them. Appellant has submitted a motion for leave from this court to proceed in forma pauperis, but his motion does not comply with NRAP 24(a). Appellant's failure to pay the supreme court filing fee or to comply with NRAP 24(a) could constitute a basis on which to dismiss this appeal. Also, appellant/petitioner submitted a motion for leave to proceed in forma pauperis in the writ proceeding. We conclude that appellant/petitioner has demonstrated that good cause exists to waive the filing fee in that matter and therefore waive the filing fee requirement. See NRAP 21(e). In light of this order, we deny as moot appellant's May 21, 2003 motion for stay, and we deny all other relief requested.] SNP04S-MS/RR/WM. Nos. 41433/42054 \u2013 cases are not consolidated.", "Document Number": "04-06535", "Document URL": "/document/view.do?csNameID=9905&csIID=9905&deLinkID=100112&sireDocumentNumber=04-06535", "Date": "04/08/2004", "Pending?": "NA"}, {"Date": "04/26/2004", "Type/Subtype": "Post-Judgment Petition - Proper Person Petition for Rehearing", "Description": "Received Proper Person Petition for Rehearing. Motion to Rehear or in the Alternative to Clarify the Order of April 8, 2004. Nos. 41433/42054-cases are not consolidated."}, {"Type/Subtype": "Post-Judgment Order - Order Denying Rehearing", "Description": "Filed Order/Rehearing Denied. \"Rehearing denied.\" fn1[NRAP 40(c).] fn2[ We direct the clerk of this court to file the rehearing petition, which was received in both docket numbers on April 26, 2004.] SNP04S-MS/RR/WM. Nos. 41433/42054 \u2013 cases are not consolidated.", "Document Number": "04-08780", "Document URL": "/document/view.do?csNameID=9905&csIID=9905&deLinkID=101495&sireDocumentNumber=04-08780", "Date": "05/11/2004", "Pending?": "NA"}, {"Type/Subtype": "Post-Judgment Petition - Proper Person Petition for Rehearing", "Description": "Filed Proper Person Petition for Rehearing.", "Document Number": "04-07647", "Document URL": "/document/view.do?csNameID=9905&csIID=9905&deLinkID=101496&sireDocumentNumber=04-07647", "Date": "05/11/2004", "Pending?": "NA"}, {"Type/Subtype": "Remittitur - Notice in Lieu of Remittitur", "Description": "Issued Notice in Lieu of Remittitur.", "Document Number": "04-08910", "Document URL": "/document/view.do?csNameID=9905&csIID=9905&deLinkID=155316&sireDocumentNumber=04-08910", "Date": "06/08/2004", "Pending?": "NA"}, {"Date": "06/08/2004", "Type/Subtype": "Case Status Update - Remittitur Issued/Case Closed", "Description": "Remittitur Issued/Case Closed."}], "filed.date": "09/17/2003", "metadata": {"To SP/Judge:": "NA", "Lower Court Case(s):": "Clark Co. - Eighth Judicial District - D219100", "Related Case(s):": ",", "Submission Date:": "NA", "Panel Assigned:": "Panel", "Case Status:": "Notice in Lieu of Remittitur Issued/Case Closed", "Replacement:": "NA", "Oral Argument Location:": "NA", "Classification:": "Original Proceeding - Civil - Proper Person Writ Petition", "Oral Argument:": "NA", "Disqualifications:": "NA", "SP Status:": "NA", "Short Caption:": "MICHAELS VS. DIST. CT. (MICHAELS)", "How Submitted:": "NA"}} |
{"poster":"DuXa14","date":"2016-01-30T11:56:37.360+0000","title":"Deleite Lunar","subforum":"Charlas Generales","up_votes":1,"down_votes":0,"body":"Por que no me habre la tienda de deleite lunar? Sale un error que dice que.... se produce un error","replies":[{"poster":"RamitaMza","date":"2016-02-07T20:20:35.171+0000","up_votes":1,"down_votes":0,"body":"A mi no me carga, se queda cargando y listo esta buggeada, desde el soporte t chamullan y no hacen nada","replies":[]},{"poster":"COFFERTHEBLACK2","date":"2016-02-04T06:01:44.814+0000","up_votes":1,"down_votes":0,"body":"A mi me pasa lo mismo hace 2 semanas que vengo con este problema y no puedo comprar a zed relampago!! Ya comente en el foro y todo pero ninguna respuesta! Hasta el momento lo unico que se sabe es que o directamente no te aparece cosa que me paso antes y la otra queda cargando eternamente","replies":[]},{"poster":"kennet R","date":"2016-02-02T17:46:36.081+0000","up_votes":1,"down_votes":0,"body":"yo intento abrir la tienda pero se queda cargando y nunca me habre las ofertas","replies":[]},{"poster":"MarcoR96","date":"2016-01-30T19:14:17.720+0000","up_votes":1,"down_votes":0,"body":"Ami no me aparece la tienda :(","replies":[]},{"poster":"exploxionex","date":"2016-01-30T15:20:11.366+0000","up_votes":1,"down_votes":0,"body":"ami me sale lo mismo :C no me deja comprar a zed filo relampago que me salio a 70% :C fruta vida","replies":[]},{"poster":"Goodbye im Nacho","date":"2016-01-30T13:24:59.066+0000","up_votes":1,"down_votes":0,"body":"Esta cerrada porque es sábado a la mañana , hasta el lunes no abre el comerciante.","replies":[]},{"poster":"DuXa14","date":"2016-01-30T11:58:52.624+0000","up_votes":1,"down_votes":0,"body":"No se si a otra persona le sale lo mismo?","replies":[]}]} |
{
"background":
{
"List":["Adventurer", "Crafter", "Laborer"]
},
"role":
{
"List":["Amateur", "Skilled", "Veteran"]
},
"class":
{
"List":["Warrior", "Fighter", "Cleric", "Mage", "Thief"]
}
}
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{"poster":"bosmafioso","date":"2019-12-22T18:47:35.682+0000","title":"AVRESTE CONSIGLI SU COME CHIUDERE UN GAME?","subforum":"Campioni e gameplay","up_votes":1,"down_votes":0,"body":"Salve a tutti, gioco jgl e maino quel simpatico lupacchiotto verdastro che si cura a sproposito, corre e fa dei danni simpatici mordicchiando la gente;\r\nho notato grazie a un particolare sito (LeagueOfGraphs) che spesso anche dopo aver fatto un buon hearly game ed essere in vantaggio con la mia squadra di parecchi gold rispetto a quella avversaria non riesco a concludere la partita e anzi lascio passare troppo tempo e spesso capita che gli avversari riescano giustamente a recuperare o semplicemente scalare a sufficienza per ribaltare le sorti del game;\r\nquindi quello che vorrei chiedere in sostanza è: avreste dei consigli da darmi su come fare a sfruttare bene questo vantaggio? e dunque riuscire a chiudere il game in un lasso di tempo decente, perché effettivamente io spesso quando finisce la fase di corsia mi sento un po' disperso e indeciso sul da farsi, mi capita spesso che vado a farmare un campo e i miei compagni muoiono in un aram-time mid o viceversa mi unisco al team ma perdiamo il fight e mi trovo indietro di esperienza e gold; vorrei capire se devo concentrarmi sul farm, sui fight , entrambe o dovrei fare qualcos'altro di totalmente diverso al quale non sto pensando? insomma HELP ME!\r\n(se avete anche consigli specifici su Warwick sono ben accetti)","replies":[{"poster":"SirBufalo","date":"2019-12-22T20:50:15.721+0000","up_votes":1,"down_votes":0,"body":"Ciao, ti rispondo giusto perché nessuno l'ha fatto finora, altrimenti me ne resterei nella mia ignoranza... Il consiglio che ti do è questo: mira a concludere il game in fretta. Può sembrare stupido, o ovvio, ma quello che è successo a te succede spesso anche a me che gioco mid: mi faccio primo sangue, altre kill mentre resto con 0 morti, il sigillo oscuro sale di stack, mi faccio la prima torre... Mi sento bello fresco e potentissimo poi basta una %%%%%% di giocata fatta nel posto sbagliato con il compagno di squadra %%%%%%%%% che gioca adc ed ha 55 farm a 18 minuti e bum, se l'avversario non è scemo sfrutta il tuo shutdown e le morti di più nemici per prendere obiettivi.\n\nNon appena prendi vantaggio, e che io sappia WW serve proprio a questo, forza questo vantaggio prendendo obiettivi (draghi/herald/baron e soprattutto: torri, anche se non conosco bene quale possa essere un eventuale ordine di priorità visti i recenti cambiamenti, ma penso comunque dipenda da match a match...) e guida i tuoi compagni. Se questi fanno abbastanza pena capisci se è il caso di dare loro kill (così anche se scemi comunque i danni li fanno) o se invece evitare perché tanto non li ritieni in grado. Fa' sempre in modo di snowballare, accelera lo svolgimento del match, ma assicurati sempre di esserne in grado a livello di risorse e di condizioni (tipo: ha senso continuare a pushare se n'altro po' gli entriamo nella fontana e questi respawnano tutti e 5, mentre noi per quanto io sia feedato siamo pur sempre in 2?).\n\nQuesti sono consigli puramente a livello di logica, forse son cose che sai fin troppo bene, però penso che tanti game su lol vengano persi perché ci si imbambola o si perde la concentrazione. Ricordati sempre che come jungler hai il grande onere, ma anche il grande vantaggio se ben sfruttato, di poter (e dover!) carpire quante più informazioni possibili dalla mappa per poter capire dove poter o dover andare a prendere obiettivi e cosa poter fare.\n\nSpero di esserti stato d'aiuto! \n{{sticker:slayer-pantheon-thumbs}}","replies":[{"poster":"bosmafioso","date":"2019-12-22T22:12:25.114+0000","up_votes":1,"down_votes":0,"body":"certo mi sei stato molto utile e cercherò di far tesoro dei tuoi consigli grazie mille =) {{sticker:sg-miss-fortune}}","replies":[{"poster":"XPY99","date":"2019-12-23T00:19:42.273+0000","up_votes":1,"down_votes":0,"body":"Aggiungo una cosa, concentrati sui draghi, sono diventati davvero potenti, l'anima di drago aiuta tantissimo e il drago maggiore se riesci a farlo arrivare sulla landa e a prenderlo intorno a 25 minuti allora dovete solo pushare fino al nexus","replies":[]}]}]}]} |
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{"id": "e8b2iy", "post_id": "reddit/dataisugly/e8b2iy", "image_name": "e8b2iy_0", "image_path": "preview/e8b2iy_0.png", "thumbnail_path": "thumbnail/e8b2iy_0.jpg", "datetime": 1575903906.0, "url": "https://reddit.com/r/dataisugly/comments/e8b2iy/cost_of_health_care_by_state_on_stretchers/", "title": "Cost of Health Care by State on Stretchers", "author": "SpaceyTheMinotaur", "popularity_score": 394, "phash": "ea4a4b533333b3b0", "duplicated_images": [], "duplicated_posts": [], "labels": ["data:geospatial", "data:quantitative", "domain:health", "effect:distorted", "fault:cannotunderstand", "form:barchart", "form:chernoffface", "form:choropleth", "layout:juxtaposition", "layout:mixed"], "remarks": "The problem is in the stretchers, very hard to compare."} |
{"poster":"MorgManBasher","date":"2019-02-05T11:48:12.566+0000","title":"I just feel like every ranked I go into is just a shit show this season","subforum":"Gameplay","up_votes":81,"down_votes":6,"body":"No one cares.\r\nTons of trolls.\r\nTerrible match making, just had a game where my mid lane was randomly Silver 1 in my plat game and got shit on, as expected....\r\nLike, why? Why on earth would you put this poor guy in my plat game when he's in promos for Gold? It's not fair for us and it's not fair for him.\r\n\r\nLike Jesus, I've never lost so many games in my life. This season just feels miserable.","replies":[{"poster":"Legalize Ranch","date":"2019-02-05T21:54:08.448+0000","up_votes":16,"down_votes":1,"body":"You're not spending enough money on skins.","replies":[{"poster":"AetherArising","date":"2019-02-05T22:01:13.876+0000","up_votes":18,"down_votes":0,"body":"> [{quoted}](name=Legalize Ranch,realm=EUW,application-id=3ErqAdtq,discussion-id=FRfEElsA,comment-id=000d,timestamp=2019-02-05T21:54:08.448+0000)\n>\n> You're not spending enough money on skins.\n\na fucking riot official survey from the client had a question \"Do you feel like purchasing skins makes you win more games?\"\nfucking what\nthats practically a backhanded/veiled question of \"do we need to rig it harder or is it more noticable\"\ni havent bought a single thing from them since.","replies":[{"poster":"ThyLordAngel","date":"2019-02-06T21:30:18.662+0000","up_votes":3,"down_votes":0,"body":"i remember that! thought it was really weird!","replies":[]}]}]},{"poster":"DarwinTheory","date":"2019-02-05T13:13:45.356+0000","up_votes":25,"down_votes":7,"body":"RIOT don't care ;)\n\nKids play lol. Which means they might have mechanical skill but lack common sense ;)\n\nAdd Meddler and a few op freelo champs \n Put it together and you have a recipe for hell ;)","replies":[{"poster":"Anchorit Wracaj","date":"2019-02-05T14:11:45.647+0000","up_votes":9,"down_votes":1,"body":"> [{quoted}](name=1Garen4Idiots,realm=EUW,application-id=3ErqAdtq,discussion-id=FRfEElsA,comment-id=0000,timestamp=2019-02-05T13:13:45.356+0000)\n>\n> RIOT don't care ;)\n> \n> Kids play lol. Which means they might have mechanical skill but lack common sense ;)\n> \n> Add Meddler and a few op freelo champs \n> Put it together and you have a recipe for hell ;)\n\nThis couldn't be more true.\nMan...yeah...","replies":[]},{"poster":"Vlada Cut","date":"2019-02-05T15:56:06.202+0000","up_votes":5,"down_votes":0,"body":"> [{quoted}](name=1Garen4Idiots,realm=EUW,application-id=3ErqAdtq,discussion-id=FRfEElsA,comment-id=0000,timestamp=2019-02-05T13:13:45.356+0000)\n>\n> RIOT don't care ;)\n> \n> Kids play lol. Which means they might have mechanical skill but lack common sense ;)\n> \n> Add Meddler and a few op freelo champs \n> Put it together and you have a recipe for hell ;)\n\nSo true it burns.","replies":[]}]},{"poster":"Moody P","date":"2019-02-05T18:54:23.703+0000","up_votes":17,"down_votes":1,"body":"getting gatekept from diamond because im losing games to autofill teammates \n\nI'm not even going to bother this season","replies":[]},{"poster":"ExxonV","date":"2019-02-05T21:09:36.337+0000","up_votes":8,"down_votes":0,"body":"It's not rly a game worth taking seriously anymore. The combination of matches not even being attempted to be balanced and how dumbed down the macros become with all these obvious objectives everywhere that makes it so even an idiot can figure out what he needs to do next, add in that all the ez brain dead strats are the most rewarding and boom... worthless 2 worry about getting better anymore, it's not really gonna help u.","replies":[]},{"poster":"BooBoo Custodian","date":"2019-02-05T15:27:18.357+0000","up_votes":8,"down_votes":0,"body":"Yep. I caught onto the bs before I finished my placement matches, I got 5 games in and decided it's not worth the frustration or effort to play Riot's rank scheme. I have more fun in normal matches, I love stats and it keeps track of all my stats in normal as well - so I'm in a good place now. I'd say just ignore the ranked feature completely if you want a more positive experience.","replies":[{"poster":"UrMom Knows Best","date":"2019-02-06T09:38:19.658+0000","up_votes":3,"down_votes":0,"body":"I feel exactly the same. The ranked system is a god damn mess. I have way more fun in normal draft","replies":[]},{"poster":"HeirofGoku","date":"2019-02-07T02:20:55.890+0000","up_votes":1,"down_votes":0,"body":"I might try that then because ranked has me pretty done with league to be honest. I only played ranked because i wanted a more balanced experience and that's out the window this season.","replies":[]}]},{"poster":"Nidus12","date":"2019-02-06T02:41:00.801+0000","up_votes":6,"down_votes":0,"body":"u guys are acting like riot is gonna listen 2 u guys. they are in it for the money shame on the streamers for promoting this god awful game","replies":[{"poster":"HeirofGoku","date":"2019-02-07T02:27:38.978+0000","up_votes":1,"down_votes":0,"body":"The money will dry up when no one takes the competitive aspect of the game serious. There are so many \"funner\" games to play that without their strong competitive hook they don't have much else to keep people interested and buying. But yeah they wont care until they notice their wallets getting thinner.","replies":[]}]},{"poster":"Peel for my ADC","date":"2019-02-05T14:29:31.657+0000","up_votes":6,"down_votes":0,"body":"I had a game recently where me and my bot lane duo went about 30/10/40 Combined and barely won because of our Silver 3 1/8/3 40 CS Riven at 15 minutes","replies":[{"poster":"Exin0","date":"2019-02-06T11:00:48.786+0000","up_votes":3,"down_votes":0,"body":"> [{quoted}](name=Peel for my ADC,realm=NA,application-id=3ErqAdtq,discussion-id=FRfEElsA,comment-id=0001,timestamp=2019-02-05T14:29:31.657+0000)\n>\n> I had a game recently where me and my bot lane duo went about 30/10/40 Combined and barely won because of our Silver 3 1/8/3 40 CS Riven at 15 minutes\n\nand probably that poor silver player get flamed to hell even reported for whatever reason, am i right?","replies":[{"poster":"Peel for my ADC","date":"2019-02-06T11:30:36.568+0000","up_votes":2,"down_votes":0,"body":"yeah, just not fair to anyone. It's really the macro difference between elos that hurts the most","replies":[{"poster":"Exin0","date":"2019-02-06T17:44:53.809+0000","up_votes":2,"down_votes":0,"body":"> [{quoted}](name=Peel for my ADC,realm=NA,application-id=3ErqAdtq,discussion-id=FRfEElsA,comment-id=000100000000,timestamp=2019-02-06T11:30:36.568+0000)\n>\n> yeah, just not fair to anyone. It's really the macro difference between elos that hurts the most\n\nwe all know something is wrong but how to fix it? make that only same division can play together and against same division? i cannot think anything else :/","replies":[{"poster":"HeirofGoku","date":"2019-02-07T02:24:26.892+0000","up_votes":1,"down_votes":0,"body":"Why that is not the way ranked is already i will never understand. Seems like the common sense way of making a ranked system.","replies":[]}]}]}]}]},{"poster":"TheyCallMeAP","date":"2019-02-05T18:50:01.550+0000","up_votes":6,"down_votes":1,"body":"Lol we hate it too. Imagine us silver players who have to lane against high gold or plat players. I mean I know placements is a way to play against better players and see if you are at their level, but Riot needs a new method that's based on stats and previous games because you either do alright against bronze or iron or get shitted on by gold","replies":[{"poster":"Daniel Shin","date":"2019-02-06T14:58:18.547+0000","up_votes":2,"down_votes":1,"body":"Quit your bs. The highest ranked player you've gone against on your account is bronze 3. Even in bronze/iron, your games don't indicate that you have been \"dominating\"","replies":[{"poster":"TheyCallMeAP","date":"2019-02-06T20:08:49.453+0000","up_votes":2,"down_votes":1,"body":"Damn my guy you really tryna go through someone's match history and going through the ranks of everyone they played? I'm not tryna be disrespectful but get a life my guy everybody talks themselves up on boards\n","replies":[{"poster":"Daniel Shin","date":"2019-02-09T20:14:10.389+0000","up_votes":1,"down_votes":0,"body":"I only went thru 1 person's match history.\nYou barely had any games played\nWhat's the point of bragging on boards?","replies":[]},{"poster":"BigFBear","date":"2019-02-07T06:25:10.453+0000","up_votes":1,"down_votes":0,"body":"> [{quoted}](name=TheyCallMeAP,realm=NA,application-id=3ErqAdtq,discussion-id=FRfEElsA,comment-id=000700000000,timestamp=2019-02-06T20:08:49.453+0000)\n\n>everybody talks themselves up on boards\n\nPretty awkward","replies":[]}]}]}]},{"poster":"Düff McWhalen","date":"2019-02-05T20:23:19.410+0000","up_votes":5,"down_votes":1,"body":"Already uninstalled. Going to for another 3 years... maybe for good. I know I don't matter, but enough people quit, they'll fucking feel it.","replies":[{"poster":"HeirofGoku","date":"2019-02-07T02:32:47.266+0000","up_votes":1,"down_votes":0,"body":"Reminds me of something \nhttp://2.media.dorkly.cvcdn.com/65/82/74ffd4b880a0d0a1b7c78702f28481e6.gif","replies":[]}]},{"poster":"Chillee","date":"2019-02-06T23:04:19.776+0000","up_votes":3,"down_votes":0,"body":"Last season made climbs seem hard but possible. This climb is like someone pushed you off a mountain, covered you in baby oil, shot you in both legs, and pissed on you for good measure.","replies":[{"poster":"MorgManBasher","date":"2019-02-07T03:45:22.473+0000","up_votes":3,"down_votes":0,"body":"> [{quoted}](name=EpicGhost54,realm=NA,application-id=3ErqAdtq,discussion-id=FRfEElsA,comment-id=001d,timestamp=2019-02-06T23:04:19.776+0000)\n>\n> Last season made climbs seem hard but possible. This climb is like someone pushed you off a mountain, covered you in baby oil, shot you in both legs, and pissed on you for good measure.\n\nFair enough lol","replies":[]}]},{"poster":"CarameI Frappe","date":"2019-02-05T20:26:01.561+0000","up_votes":2,"down_votes":0,"body":"It feels really unfair this season. I can't get out of Gold II despite being on the brink of my promos because they'll purposely place someone on a losing streak into my game, or i'll get people below my rank on my team vs the team that's my rank or higher. Feels VERY infuriating to deal with, not to mention I can't even play {{champion:89}} because champs like {{champion:67}} {{champion:63}} {{champion:143}} {{champion:114}} {{champion:11}} {{champion:75}} {{champion:23}} ect. will utterly destroy me late game, despite trying my best to CC them and such. Not even worth playing a tank, just go mage or enchanter with damage items instead.","replies":[{"poster":"Alice Fish","date":"2019-02-06T23:21:53.807+0000","up_votes":3,"down_votes":0,"body":"I feel like support mains have just been shit on since the {{item:3504}} meta. Everyone hates us. :'(","replies":[{"poster":"hrooza dota ","date":"2019-02-07T02:32:00.177+0000","up_votes":1,"down_votes":0,"body":"i hated supports back in that meta and im a support main\n\n{{sticker:sg-lulu}}","replies":[]}]}]},{"poster":"coach chriis","date":"2019-02-06T21:05:20.453+0000","up_votes":3,"down_votes":0,"body":"Revert League ranked system petition -- https://www.change.org/p/riot-games-revert-league-of-legends-ranked-system","replies":[]},{"poster":"Zed genius","date":"2019-02-05T22:04:09.099+0000","up_votes":3,"down_votes":0,"body":"They want that. They saw how fortnite became popular among 7 year olds so they are using the same marketing. Kids are way more likely to enjoy shit shows in the game.","replies":[]},{"poster":"I Do Pew Pew Pew","date":"2019-02-05T17:15:59.152+0000","up_votes":3,"down_votes":0,"body":"Enemies banned Zyra, my support picked Yasuo <333 \"I LOVE THAT KIND OF PLAYERS\"","replies":[]},{"poster":"Vlada Cut","date":"2019-02-05T15:55:11.836+0000","up_votes":5,"down_votes":2,"body":"The game keeps putting bronze 1 and iron players in my matches.\nTry to carry THESE abominations.","replies":[{"poster":"5eapea","date":"2019-05-14T02:22:26.202+0000","up_votes":1,"down_votes":0,"body":"> [{quoted}](name=Vlada Cut,realm=EUNE,application-id=3ErqAdtq,discussion-id=FRfEElsA,comment-id=0004,timestamp=2019-02-05T15:55:11.836+0000)\n>\n> The game keeps putting bronze 1 and iron players in my matches.\n> Try to carry THESE abominations.\n\nI'm iron now and I resent that lol I feel like good or bad player it really doesn't matter. If you're in iron - it's for the long term.","replies":[]}]},{"poster":"The Trent","date":"2019-02-06T08:58:21.851+0000","up_votes":2,"down_votes":3,"body":"Its funny tho cus I see people saying this about every season, but no, this season is obviously WAYYY worse than the last haha. Being saracastic btw, y'all just hypocrites","replies":[{"poster":"MorgManBasher","date":"2019-02-06T10:08:29.611+0000","up_votes":3,"down_votes":0,"body":"> [{quoted}](name=The Trent,realm=NA,application-id=3ErqAdtq,discussion-id=FRfEElsA,comment-id=0014,timestamp=2019-02-06T08:58:21.851+0000)\n>\n> Its funny tho cus I see people saying this about every season, but no, this season is obviously WAYYY worse than the last haha. Being saracastic btw, y'all just hypocrites\n\nPersonally never had a problem with match making till this season and when they released garbage flex que as the main ranked.\nOther than those 2, I am generally fine with match making.","replies":[]}]},{"poster":"BlackEyesBlue","date":"2019-02-06T18:55:03.791+0000","up_votes":2,"down_votes":0,"body":"Agreed.\n\nMaybe 9 out of 10 games have felt like massive mismatches. Win or lose.\n\nRanked matchmaking was already terribel, now it feels straight broken!","replies":[]},{"poster":"Francis Xavierr","date":"2019-02-06T01:33:28.381+0000","up_votes":2,"down_votes":0,"body":"It feels wayyy different from last season where you were generally matched up against similar skilled players now its soo lopsided that if you don't have 15 kills and 250cs by 20mins its pretty much an auto loss because someone on the enemy team will be mega fed it makes absolutely no sense. I try to play safe in lane and just go for trades and all ins only when i know i can win but if i have to play a safe lane it's almost impossible to carry because my toplaner is 0/8 my midlaner is 1/5 and my jungler is afk in a bush, and this is over 40+ games and it's the same story every single game! Ill give some examples here my last game I had a zed mid who died 8 times to a zoe and the jungler had died 5 times trying to save him so basically even though i was ahead in lane by 2 kills it didn't matter because zoe could all of the sudden 1 shot everyone on our team too me that sounds like a matchmaking issue. Prior to that game had a teemo top vs a garen the garen of course has 5 solo kills within 10 mins. I understand that because I main ADC I kind of have the short end of the stick as far as carry potential goes in the current state of the game but it also should not be the case that if you are not or do not have a smurf on your team you auto lose, that basically defeats the entire allure of ranked if every game is a stomp because one team is playing there main role in one division while the other team is off-role 2 divisions lower than they normally are. This is also the case for all my friends at the moment whether they are low silver or high plat, I have one friend who has been at least plat since season 3 and he can't even get through his gold promos because of the matchmaking right now.","replies":[{"poster":"BigFBear","date":"2019-02-07T06:29:28.152+0000","up_votes":1,"down_votes":0,"body":"Nice block you built there...","replies":[]}]},{"poster":"ÈvilMorty","date":"2019-02-05T20:57:15.235+0000","up_votes":2,"down_votes":0,"body":"My recent gold 1 promos\nBot lane irellia with cleanse with taric, they actually didnt do too bad but picked way too many fights we couldnt win, 1v5 dives, died the ,most. Top lane feeds out the ass (granted i played like ass in that game because of the constant oh just play safe under turret but 2-3v1 tower dives over and over)\n2nd game, the SAME BOT LANE that does worse plus a 2-11 top ryze","replies":[]},{"poster":"Cuby","date":"2019-02-06T21:55:39.761+0000","up_votes":3,"down_votes":1,"body":"People just don't take their secondary or auto-fill roles seriously anymore. The season ranked changes have made people focus pretty much entirely on ONE main role. If they don't get that role, they don't care anymore; their LP gain and losses are minimal and do not affect their main role that much. \n\nAlso the skill differences are weird as well in matchmaking lately.","replies":[]},{"poster":"Nevrankroaton","date":"2019-02-06T06:20:00.039+0000","up_votes":1,"down_votes":3,"body":"I will be real.\n\nWe have this topic every preseason.","replies":[{"poster":"MorgManBasher","date":"2019-02-06T10:09:50.011+0000","up_votes":2,"down_votes":0,"body":"> [{quoted}](name=Nevrankroaton,realm=EUW,application-id=3ErqAdtq,discussion-id=FRfEElsA,comment-id=0013,timestamp=2019-02-06T06:20:00.039+0000)\n>\n> I will be real.\n> \n> We have this topic every preseason.\n\nPersonally never had this issue really before.\nLike, never seen a silver in a plat game till now.\n\nHaven't been this displeased with ranked since they did the garbage flex que as the only rank system with no solo/duo que.","replies":[]}]},{"poster":"chide da jungler","date":"2019-02-05T23:46:35.874+0000","up_votes":3,"down_votes":2,"body":"placement games are something you just have to endure. After 20+ games the mmr becomes a lot more accurate.\n\nI have gotten 3 accounts through promos and it was predictably over by 10 min with no chance of a comeback because someone was just too stupid to be carried.","replies":[]},{"poster":"Hexs Fortune","date":"2019-02-06T06:09:27.913+0000","up_votes":2,"down_votes":1,"body":"> [{quoted}](name=MorgManBasher,realm=NA,application-id=3ErqAdtq,discussion-id=FRfEElsA,comment-id=,timestamp=2019-02-05T11:48:12.566+0000)\n>\n> No one cares.\n> Tons of trolls.\n> Terrible match making, just had a game where my mid lane was randomly Silver 1 in my plat game and got shit on, as expected....\n> Like, why? Why on earth would you put this poor guy in my plat game when he&#039;s in promos for Gold? It&#039;s not fair for us and it&#039;s not fair for him.\n> \n> Like Jesus, I&#039;ve never lost so many games in my life. This season just feels miserable.\n\nIts terrible. Matchmaking has never been so poor","replies":[]},{"poster":"GankLord","date":"2019-05-14T02:41:06.971+0000","up_votes":1,"down_votes":0,"body":"Yeah i can't play ranked Solo anymore. I was gold last season and got placed silver 2 this season. I literally had games where I won 7 in a row lost one and went on a 10 game lose streak. The same thing happened when I reached gold again this season. I got a win streak to gold. First game in Gold I lost and have been on a 5 game lose streak. I'm done with solo q ranked until this MM get's fixed it's ridiculous the diceroll. One person can throw the entire game. It doesn't matter (I'm a jungler) if I get a lane super fed and shut down the enemy jungler. It only takes one person. Also the nerfs to vision they seem to love does not help. Now last season wasn't perfect at all. I still believe the best seasons were 3-5. I started in Season 2 and didn't get serious about ranked till season 4. However, this is the worst ranked season yet. It's a mess but because LOL is so big I highly doubt they are going to do anything about it. I still stand by the belief that runes reforged was the worst idea ever. All they had to do was make runes free in the old system but oh well. I'm just gonna play normals or Flexed till they fix this.","replies":[]},{"poster":"Morgana Deus","date":"2019-02-06T18:47:40.118+0000","up_votes":1,"down_votes":0,"body":"I made it plat 4 with an 80% win rate. Got there and suddenly I'm the only plat in every single game . Every game is now low gold mmr. My teammates are all gold 4. My enemies are all like gold 2. Most miserable experience of league since preseason.","replies":[]}]} |
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{"poster":"Gatzyrel","date":"2015-08-29T02:23:24.779+0000","title":"Algunos consejos vs Yasuo en mid??","subforum":"Guias y consejos","up_votes":3,"down_votes":1,"body":"Holi, Es mi primera vez en el foro ^^U... Bue, Al tema.\r\nQuisiera saber si alguien puede darme un par de consejitos contra un {{champion:157}} en mid.\r\nMuchas veces que fui a esa linea y me toco contra el no pude ganarle linea, Normalmente voy con {{champion:91}} , {{champion:55}} o {{champion:7}} (Para variar {{champion:25}} o {{champion:45}} ) . Contra cualquier otro campeon puedo llegar a ganar linea, Pero a el no puedo ya que con su gran cantidad de critico me deja hecho bolsa y apenas puedo llegar a tocarle la torre ^^U.\r\n\r\nSi alguien podria aconsejarme algo que ayude a contrarestar todo ese critico con esos campeones nombrados anteriormente o algun campeon que le haga counter a Yasuo le agradeceria mucho :D\r\n\r\nHasta luego :P","replies":[{"poster":"FLÄNOS","date":"2015-09-02T02:17:51.162+0000","up_votes":1,"down_votes":0,"body":"algo muy sencillo para ganarle , cuando te pelees con el , si eres un champ con proyectiles como morgana , espera a que lanze su escudo , haciendole como un bait mas o menos y ahi tirarle todo porque al estar stuneado no hace mucho.","replies":[]},{"poster":"TheDarkKnight02","date":"2015-08-29T16:59:57.232+0000","up_votes":1,"down_votes":0,"body":"yasuo no tiene sustain,y no tiene escape,en early no debe ser un problema,le pegas básicos para que se le salga la barrera y dejas que pushee,un gank del jg y vas a tener ventaja","replies":[{"poster":"SenpaiDeathx","date":"2015-08-30T01:04:28.978+0000","up_votes":1,"down_votes":0,"body":"jkfaejkjfakj un gank del jg xDDDDD lei eso y ya fue un mal comentario","replies":[{"poster":"kique1","date":"2015-08-30T04:59:42.249+0000","up_votes":1,"down_votes":0,"body":"Un buen jungler debería saber que Yasuo es izi gank, una porque no tiene escape y dos porque siempre suelen jugar muy agresivos y pushean la línea.","replies":[]}]}]},{"poster":"kique1","date":"2015-08-29T08:46:32.847+0000","up_votes":1,"down_votes":0,"body":"Con {{champion:103}} deberías tener una línea fácil, lo puedes pokear hasta el cansancio con básicos, y en teoría no debería ni poder acercarse a ti con todo el kit que tiene. Un charm bien metido en un gank y está muerto. Si te llegara a alcanzar con el ulti, tienes el tuyo para escapar bajo torre. El único problema es que como no gasta maná puede quedarse en la línea lo que quiera.","replies":[{"poster":"Nyán","date":"2015-08-29T10:45:54.709+0000","up_votes":1,"down_votes":0,"body":"Nop. Yasuo es uno de los matchups más difíciles contra Ahri. Como mencionas, está el problema de su sustain y spameo de habilidades sin recursos. Pero el mayor problema es su pared de viento. Literalmente, bloquea todo tu kit.\nSu movilidad con la E entre los minions, significa que por lo menos podrá esquivar un charm. \nNo es recomendable pokearlo mientras tenga su pasiva. Pero si se la quitas, cualquier Yasuo con sentido común jugará un poco más defensivo.\n\nEn la manera que planteas el matchup, se ve bien para Ahri, pero no lo es. La verdad es que sólo mencionas la manera en que se debería jugar con Ahri.\n(Escapar del peligro con la ulti y pegar charm cuando te divean)","replies":[{"poster":"kique1","date":"2015-08-29T12:32:34.389+0000","up_votes":1,"down_votes":0,"body":"El muro de viento tiene un enfriamiento muy largo, lo tira una vez y Yasuo queda expuesto a todos los ataques.\n\nEl escudo se le quita de un básico y eso no es problema con un campeón de rango...\n\nLa gracia de acertar el charm es adivinar hacia donde Yasuo va a tirar la E, generalmente los yasuos juegan muy ofensivo y tarde o temprano se te va a tirar encima.\n\nEn realidad no es un matchup fácil, todo depende de cómo administres tu mana y qué tan certeros sean tus skillshots, obviamente si dejas que se te tire encima estás en graves problemas, pero para Ahri eso corre con todos los duelos en mid...","replies":[{"poster":"Nyán","date":"2015-08-29T16:47:07.775+0000","up_votes":1,"down_votes":0,"body":"> [{quoted}](name=kique1,realm=LAS,application-id=8sKIclmi,discussion-id=0zA3Nxlt,comment-id=000400000000,timestamp=2015-08-29T12:32:34.389+0000)\n> En realidad no es un matchup fácil,\n\nTe acabas de contradecir XD \nEs verdad lo que dices en este comentario. Yo te respondí a que habías dicho que era una línea fácil con Ahri.","replies":[{"poster":"kique1","date":"2015-08-30T04:55:14.533+0000","up_votes":1,"down_votes":0,"body":"Bueno sí, lo que quise decir es que con Ahri puedes jugar más safe que con otros midlaners en general.","replies":[]}]},{"poster":"xBASTOXx","date":"2015-08-29T14:46:17.680+0000","up_votes":1,"down_votes":0,"body":"Te apoyo xd Ahri es mi main y tantas veces que ya juegue contra un yasuo ya aprendi perfectamente como ganarle la linea :D solo hay que aprender a jugarle nada de especial:)","replies":[{"poster":"Nyán","date":"2015-08-29T16:48:21.224+0000","up_votes":1,"down_votes":0,"body":"Se puede aprender a jugarle XD\nPuse mi comentario porque kique1 había dicho que era un matchup fácil.\nPor lo que entiendo con \"fácil\" es que no necesitas mucho esfuerzo ni planificación para ganar la línea. Con Yasuo es más complicado que eso.","replies":[]}]}]}]}]},{"poster":"SenpaiDeathx","date":"2015-08-30T01:06:29.783+0000","up_votes":1,"down_votes":0,"body":"Te recomiendo {{champion:134}} A parte que recibirá un buff en el próximo parche puedes poquearle con las Q que no las blockea el muro y en caso de que se te acerque demasiado lo empujas y stuneas con tu E","replies":[]},{"poster":"Ryu Kayzer","date":"2015-08-29T15:20:47.553+0000","up_votes":1,"down_votes":0,"body":"Yo maineo a {{champion:103}} porque es la primera que me compré y mi favorita <3 xd\nSuelo toparme muchos {{champion:157}} y {{champion:238}} en mid. Generan problemas debido a que no usan maná y tienen habilidades bastante hostigosas.\nPero he aprendido a lidear con ellos, incluso a algunos mantenerlos bajo su torre.\nPero lo que debes hacer es poquear, habilidades cuidadosamente. cuando el enemigo lasthitee.\nVersus Yasuo, moverte mucho de lado a lado, suele avisar cuando tirarà su tornado, también suelo acercarme finguiendo ataque para que se apure y tire su muro de viento, obviemente sin la carga de viento de su tornado.\nFinalmente debes hacerte {{item:3157}} SI O SI, ya que te ríes de la definitiva de los dos campeones mencionados. \nPelear con cuidado y si se acercan mucho, ellos se quedan propensos a gank\nsaludos.","replies":[]},{"poster":"Armas pesadas","date":"2015-08-29T12:55:42.836+0000","up_votes":1,"down_votes":0,"body":"las debilidades son la desactivacion de su escudo con ataques basicos, uno de rango tendra ventaja sobre un melé, comenzar a armarse armadura, yasuo al usar el muro de viento se quedara tras de el defendiendose por lo tanto estara en un lugar fijo buen momento para utilizar algun control de masa y por ultimo yasuo no escala en resistencia magica un daño magico importante q se le inflinja le restara mucha vida. Lo otro es conveniente tener un poco de movilidad para esquivar sus tormentas de acero y mantener la distancia cuando usa su desplazamiento.","replies":[]},{"poster":"Nyán","date":"2015-08-29T10:52:42.843+0000","up_votes":1,"down_votes":0,"body":"A mí me fascina Morg mid :D Es un champ muy seguro y Yasuo no debería poder usar su ulti contigo. Podrías salir con ventaja o igual si la usas contra Yasuo. \nTu pasiva te da sustain y lo único que te puede bloquear Yasuo es tu Q.\nSi te da problemas porque es muy agresivo, deja que te pushee hasta más o menos tu torreta. Así no podrá ser tan agresivo.\nSi quiere empezar un trade, una Q en la cara y W.","replies":[]},{"poster":"Perrito","date":"2015-08-29T07:00:29.883+0000","up_votes":1,"down_votes":0,"body":"Deberías poder ganarle con LeBlanc xD. Con ella, primero debes sacarle el escudo siempre que puedas con un básico. Luego el típico combo q+w. Y tienes que estar atento si te tira el muro, posicionarte bien y luego tirar el resto de las cosas... xD En realidad, LeBlanc lo counterea un poco, no tanto, pero lo suficiente como para ganarle... :3\n\nRiven creo que le gana fácilmente y Akali, pero no las uso. Diana igual le gana, por ser fuerte cuerpo a cuerpo... Yo le gano con Quinn xD... Pero hay que tener cierta práctica para ganarle con Quinn. Saber kitear y saber desenganchar rápido. Quinn le gana según yo: tiene todo lo que yasuo odia: rango, un fuerte desenganche, ciega ataques básicos, con Valor pega un montón... Quinn le gana a nivel 6 con el tercio de la vida y yasuo con la mitad: Quinn lo ciega y le baja la vida mientras tanto, al final la segunda activa del ulti hace daño según la vida perdida... Ahí ve tú... :3","replies":[]},{"poster":"Ellora","date":"2015-08-29T03:36:49.904+0000","up_votes":1,"down_votes":0,"body":"yasuo no es problema por los criticos\nEs porque no usa mana y tiene un CD bajisimo de las skills, algo similar que pasa con zed. Por eso en early puede abusar de sus habilidades vs magos con mana. Ademas que tiene una muy buena limpieza de minions","replies":[]},{"poster":"Bienzahar","date":"2015-08-29T02:45:06.637+0000","up_votes":1,"down_votes":0,"body":"Lo que yo hago contra yasuo si voy con un ap es que me hago de primeras el Eco de Luden, porque le sacas el escudo de su pasiva con el rebote de la pasiva del objeto y le entra el daño de los hechizos posteriores.\nCon talon me acerco con la e, pego un basico y luego le pego con la q y la w, ese es el combo que debes hacer cada vez que tradees.","replies":[]},{"poster":"Storm2400","date":"2015-08-29T02:33:28.725+0000","up_votes":1,"down_votes":0,"body":"**Consejos de Tito Storm el Solo MID**\nPrimero que todo debes tener siempre en tu catalogo de solo mid a 2 personajes los cuales son\n{{champion:127}} en caso de asesinos y magos varios en general es muy buena para counterear a talon y a zed\n{{champion:90}} este tambien especial contra asesinos pero más contra un yasuo ya que no necesitas lanzar una skillshot para pokear y puedes tanto silenciar como suprimir y tienes mucho dps, su problema es que en early gasta mucho mana y es dificil poner la w con la e y la r para hacerle todo el dps y necesita cdr si o si\nen caso de que no te vayan estos personajes usa a {{champion:268}} la paloma bugueada y pon soldados detras de su orda de subditos y no lo dejes farmear\nPD:Ironicamente no tengo ni a liss ni a malza pero esta en proceso","replies":[]}]} |
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{
"directions": [
"Finely chop the orange in a food processor.",
"Combine cranberries and sugar in a heavy saucepan. Cook and stir over medium heat until cranberries just begin to pop, about 10 minutes.",
"Transfer cranberries to a bowl, add apricot preserves and mix until melted. Stir in chopped orange, drained crushed pineapple and lemon juice. Cover and refrigerate until well chilled."
],
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"1 1/2 cups white sugar",
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"1 (8 ounce) can crushed pineapple, drained",
"2 tablespoons lemon juice"
],
"language": "en-US",
"source": "allrecipes.com",
"tags": [],
"title": "Cranberry Relish I",
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}
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{"url": "https://bland.is/umraeda/krampar-a-skritnum-stodum/30195064/?page=1556", "date": "2013-08-12 22:56:50", "id": "30195064", "items": [{"text": "Ég er farin að lenda reglulega í því að þegar ég er að beygja mig á einhvern ákveðinn hátt (t.d. klæða mig í sokka eða setja strákinn minn í skó) þá fæ ég rosalegan verk hægra megin fyrir neðan brjóstið, þar sem rifbeinin eru. Þessi verkur er einhver veginn eins og krampi eða samdráttarverkur og hann fer ekki fyrr en ég rétti alveg úr mér og slaka aðeins á. Ég get þá engan veginn beygt mig aftur í einhvern smá tíma því þá kemur þetta aftur. Kannast einhver við þetta??", "title": "Krampar á skrítnum stöðum", "username": "Maluettan", "message_id": "30195064", "user_id": "3056", "response_to": null, "datetime": "2013-08-12 22:56:50", "datestring": "12. ágú. '13, kl: 22:56:50"}, {"response_to": "30195064", "username": "HvuttiLitli", "message_id": "30195076", "user_id": "41476", "datetime": "2013-08-12 23:03:41", "datestring": "12. ágú. '13, kl: 23:03:41", "text": "Millirifjagigt? Hljómar allavega þannig, finnst mér a.m.k."}, {"response_to": "30195076", "username": "Maluettan", "message_id": "30195078", "user_id": "3056", "datetime": "2013-08-12 23:05:20", "datestring": "12. ágú. '13, kl: 23:05:20", "text": "Já ég var að spá í því líka. En ég hef líka lengi verið með þessa týpísku millirifta gigtar verki en þetta er eitthvað svo öðruvísi en ég er vön :)"}, {"response_to": "30195078", "username": "HvuttiLitli", "message_id": "30195082", "user_id": "41476", "datetime": "2013-08-12 23:11:47", "datestring": "12. ágú. '13, kl: 23:11:47", "text": "Þú meinar. Ég vona bara að þú losnir við þetta sem fyrst, hvað sem þetta er þá hlýtur þetta að vera fjandi óþægilegt. Ertu búin að vera með þetta lengi?"}, {"response_to": "30195064", "username": "Mystery", "message_id": "30195080", "user_id": "12884", "datetime": "2013-08-12 23:09:53", "datestring": "12. ágú. '13, kl: 23:09:53", "text": "vá já þú ert bara alveg að lýsa þessu eins og þetta er hjá mér ekkert smá óþæginlegt"}, {"response_to": "30195064", "username": "Miervaldis", "message_id": "30195089", "user_id": "236723", "datetime": "2013-08-12 23:14:25", "datestring": "12. ágú. '13, kl: 23:14:25", "text": ""}, {"response_to": "30195089", "username": "Maluettan", "message_id": "30195152", "user_id": "3056", "datetime": "2013-08-12 23:49:48", "datestring": "12. ágú. '13, kl: 23:49:48", "text": "Takk fyrir þetta. Ég er líka orðin rosalega viðkvæm þegar kemur að sinardráttum. Má ekki krossleggja fætur eða gera neitt og þá fæ ég sinadrátt ásamt því að fá svona kipp í fótinn þegar ég rétt svo rekst í hann, eins og þegar læknir slær með hamri á hnéskélina. Fæ þannig mjög oft núna útaf nánast engu! .... Er ég dauðvona??"}]} |
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{"poster":"Scuftz","date":"2016-10-06T11:15:41.518+0000","title":"Idea for Hextech Crafting","subforum":"Gameplay & Strategy","up_votes":2,"down_votes":0,"body":"I thought it would be pretty cool if you get different things instead of champion/skins shards. For example, you could get an ARAM skin boost from the hextech box. No need to upgrade, just add a button in ARAM to choose whether you want to activate it if you have a shard of it. If you can give 3250rp skins, I think a 100rp skin boost wouldn't cause too much harm if you were to add it into the lottery.\r\n\r\nany other ideas like this would be pretty cool.","replies":[{"poster":"Glow","date":"2016-10-06T19:16:25.694+0000","up_votes":1,"down_votes":0,"body":"That's a really good idea, especially considering you can already get temporary rewards such as renting skins for a week. Would it just be for ARAM (where the skin boost option exists) or would it be a generic token that could be used for other queue types? Not everyone plays ARAM, but I suppose you could reroll it just like any other reward.","replies":[]}]} |
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"In a skillet over medium-high heat, cook the sausage until evenly browned. Drain, and remove sausage from the pan. In the same pan, using the remaining coating of grease from the sausage, scramble the eggs, stirring frequently until cooked through. Set aside.",
"Heat the oil in a very large skillet or electric skillet over medium-high heat. Stir fry the cabbage and carrots just until the cabbage has wilted. Add the cold rice, and fry, stirring so that there are no clumps. Mix in the sausage and pour in some soy sauce. Stir in bean sprouts, peas, and eggs, mixing well so there are no big chunks of egg. Season with pepper, and stir in green onions just before removing from the heat. Adjust soy sauce to taste, and serve."
],
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"1 (14.5 ounce) can bean sprouts, drained",
"1 (6 ounce) package frozen green peas, thawed",
"ground black pepper to taste",
"3 green onions, chopped"
],
"language": "en-US",
"source": "allrecipes.com",
"tags": [],
"title": "Glo's Sausage Fried Rice",
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{"title":"Jaya Ganga ~ 1998 ~ Hindi ~ 493 MB ~ E-subs ~ Phantom","uid":7187070,"size":517367246,"categoryP":"video","categoryS":"movies","magnet":"?xt=urn:btih:feb4d34558376111504a0989d7a66fbb682b1f3c&dn=Jaya+Ganga+%7E+1998+%7E+Hindi+%7E+493+MB+%7E+E-subs+%7E+Phantom&tr=udp%3A%2F%2Ftracker.openbittorrent.com%3A80&tr=udp%3A%2F%2Fopen.demonii.com%3A1337&tr=udp%3A%2F%2Ftracker.coppersurfer.tk%3A6969&tr=udp%3A%2F%2Fexodus.desync.com%3A6969","seeders":0,"leechers":2,"uploader":"zyx55e","files":2,"time":1334478259,"description":"Jaya Ganga ~ 1998 ~ Hindi ~ 493 MB ~ E-subs ~ Phantom\n\nJaya Ganga is an NFDC film based on Vijay Singh's first novel Jaya Ganga, In Search Of the River Goddess . The film is shot on breathtaking locations across North India, including Gomukh, Gangotri, Rishikesh, Haridwar, Chunar, Benares , Paris and Limours. The film has been screened at several major film festivals across the world. It was first screened at the Montreal International Film Festival in the official competition category. Its first screening in India was at the 27th International Film Festival of India in New Delhi in January 1996, and it was later released in other cities in 1997. Its releases in India and Europe got it a lot of critical and commercial success. This was also the debut for its lead actress Smriti Mishra.\n\nSYNOPSIS\nNishant, a young Indian writer living in Paris, is journeying down the Ganges, from its source in the Himalayas to the sea. Haunted by the fantasy, or the memory, of a beautiful Parisian woman called Jaya, he plans to write a book around his voyage. On the banks of the turquoise Ganges, one morning, he chances upon Zehra, an irresistible poetess-dancing girl in the tradition of the great courtesans, who performs in a nearby brothel. Zehra resurrects the memory of Jaya. As love casts its spell once again on Nishant, he asks Zehra to join him on his journey, but her illusory freedom is shadowed by a formidable network of the brothel's spies. Nonetheless, Nishant manages to make Zehra flee from the brothel, and join him on his journey. Romance takes over. A new life begins for Zehra as Nishant would like her to accompany him back to Paris. Half way down the river, at the height of their romance, Nishant receives a telegram. Zehra soon realises how Nishant's fantasy of a half-real half-unreal woman could transform her life into a journey of ambiguous surprises...\n\nCast :\nAsil Rais - Nishant\nSmriti Mishra - Zehra\nPaula Klein - Jaya\nVijay Singh- Sanjay\nAnupam Shyam - Bulldog\n\nMedia Info:\n\nLanguage - Hindi (Indian)\nVideo Size - 493 MB\nVideo Codec - H.264/AVC\nVideo Res - 720 x 464\nVideo Frame Rate - 29.97 fps \nVideo Bitrate - 862 Kbps\nVideo Container - Matroska Video\nSubtitles - English Hardcoded\nAudio Codec - AAC\nChannels - Stereo\nSample Rate - 48000 Hz @ 128 kbps\nLength - 1 Hr 19 mins\n\nScreenshots: <a href="\nhttp://bayimg.com/haOopAADa" rel="nofollow" target="_NEW">\nhttp://bayimg.com/haOopAADa</a>","torrent":{"xt":"urn:btih:feb4d34558376111504a0989d7a66fbb682b1f3c","amp;dn":"Jaya+Ganga+%7E+1998+%7E+Hindi+%7E+493+MB+%7E+E-subs+%7E+Phantom","amp;tr":["udp%3A%2F%2Ftracker.openbittorrent.com%3A80","udp%3A%2F%2Fopen.demonii.com%3A1337","udp%3A%2F%2Ftracker.coppersurfer.tk%3A6969","udp%3A%2F%2Fexodus.desync.com%3A6969"],"infoHash":"feb4d34558376111504a0989d7a66fbb682b1f3c","infoHashBuffer":{"type":"Buffer","data":[254,180,211,69,88,55,97,17,80,74,9,137,215,166,111,187,104,43,31,60]},"announce":[],"urlList":[]}} |
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{"poster":"OneCreepy","date":"2016-01-28T13:44:12.527+0000","title":"Wie stellt ihr euch Drawn vor?","subforum":"Skin- & Champion-Konzepte","up_votes":1,"down_votes":0,"body":"Hi Leute.\r\nWie stellt ihr euch Drawn vor.\r\nSchickt ein Fan Art von ihn in meine \r\nE-Mail Adresse: danielarthur06@gmail.com\r\n\r\nBeachten.\r\nDrawn ist ein Mann\r\nEr hat 2 Klingen an seine Arme\r\nDen Rest findet ihr unter diesen link.\r\n\r\nhttp://boards.euw.leagueoflegends.com/de/c/skin-champion-konzepte-de/eeQuarf7-neue-champion-idee?comment=0003","replies":[{"poster":"The valiant Hero","date":"2016-01-28T14:00:23.565+0000","up_votes":1,"down_votes":0,"body":"Draven + Leona\n\neinfach nur vom namen her","replies":[]}]} |
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{"poster":"Aır","date":"2016-09-15T12:04:44.668+0000","title":"Error al abrir la tienda de objetos (se abren las estadísticas avanzadas)","subforum":"Problemas Técnicos","up_votes":1,"down_votes":1,"body":"La verdad este error me afectó hace 2 o 3 días\r\nLo que pasa es que al darle a la p e intentar abrir la tienda de objetos se abren las estadisticas avanzadas, lo raro, es que hace el sonido de cuando abres la tienda y otra cosa "curiosa" es que no hay ninguna tecla para dejar abierto eso, y eso se queda abierto, "estatico", sin tener que mantener presionado\r\n\r\nPor lo que he investigado se trata de un error en la "cuenta" ya que al logear con otra cuenta, el error no está\r\n\r\nProbare prestandole la cuenta a un amigo, o sino, pienso que deberian arreglarlo en la siguiente actualizacion, ya que hay muchos afectados con esto *~*\r\n\r\nSeguire intentando e informare si lo soluciono c:","replies":[{"poster":"Weed Lion 420","date":"2017-04-19T04:53:21.553+0000","up_votes":1,"down_votes":0,"body":"Arreglaste tu problema?, me paso lo mismo, pero hace 3 dias.. y no eh podido jugar correctamente","replies":[]},{"poster":"SATIV","date":"2016-09-15T14:15:48.640+0000","up_votes":1,"down_votes":0,"body":"Dat","replies":[]}]} |
{"_id":"A91311","titles":["Twelve queries of publick concernment humbly submitted to the serious consideration of the Great Councell of the Kingdome. By a cordiall well-wisher to its proceedings."],"author":["Prynne, William, 1600-1669."],"place":"London :","date":"MDCXLVII. [1647]","publisher":"Printed by J.M. for M. Spark at the Bible in Green Arbour,","notes":["Caption title.","Imprint from colophon.","A cordiall well-wisher to its proceedings = William Prynne.","Annotation on Thomason copy: \"Aprill 30 1647\"; \"Mr. Prin\".","Reproduction of the original in the British Library."],"editionDate":"1647","language":"eng","keywords":["Great Britain -- History -- Civil War, 1642-1649 -- Pamphlets."]} |
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{"poster":"Yoúkó Mîyú","date":"2015-06-13T11:50:15.777+0000","title":"Morde schild blockt 3 schüße wtf?!!??!?!","subforum":"Champions & Gameplay","up_votes":1,"down_votes":4,"body":"Hallo, gestern habe ich eine runde Talon gespielt in der mid lane gegen einen Mordekaiser ich habe gut getradet und gut gepokt mit meiner w, aber als wir dan beide lv 2 waren und morde 200 hp hatte hat er mich einfach gedivt ohne schaden zu krigen seine passive hat 3 SCHÜßE Geblockt???? Ich finde das ist viel zu op wenn man den yasou schild und den morde schild vergleicht ist der mordekaiser schild echt viel zu brutal! Bitte nerft den schild danke!{{item:2050}}","replies":[{"poster":"OrangeBubble","date":"2015-06-13T11:59:04.975+0000","up_votes":5,"down_votes":0,"body":"Morde ist so krass mit seinem Chain-CC und seinem Chain-Selfbuff. Da ist das Schild sowas von unangebracht. Und das ganze auch noch mit Level 2, bombe. \n\nLevel 2 Morde Schield 190!!!\nUnd ein Tower Shot macht 150 DMG!!!\nDas Schild blockt 100% 3 Shots!!","replies":[{"poster":"Veezey","date":"2015-06-13T12:14:51.553+0000","up_votes":3,"down_votes":0,"body":"Na vielleicht hatte der Morde ja noch 200 Armor auf lvl 2 :D","replies":[{"poster":"OrangeBubble","date":"2015-06-13T12:34:32.599+0000","up_votes":2,"down_votes":0,"body":"Morde hat von Natur aus schon mind. 150 Armor, dazu die speziellen Morde Runen + Mastery und zack hat der Morde 200 Armor auf Level 2 :)\n\nDas kombiniert mit dem übelst krassen Schild + CC + Selfbuff, da wird er zur unaufhaltsamen Lok. Der rast mit over 9000 km/h auf dich zu und killt dich unter dem Tower mit Level2!","replies":[{"poster":"Veezey","date":"2015-06-13T13:04:48.485+0000","up_votes":3,"down_votes":0,"body":"Dann muss man natürlich noch die Castrange seiner Skills angucken. Seine Ulti kann er global benutzen. Die Q erhöht die Autoattackrange um 1000. Das verbunden mit der Highmobility und dem CC Chain ist schon echt krass :)","replies":[{"poster":"OrangeBubble","date":"2015-06-13T13:08:12.962+0000","up_votes":2,"down_votes":0,"body":"Ja die Angst einflößende global Ult hab ich total vergessen T.T Aber das Problem hat man zum Glück erst mit Level 6 :) Bis dahin hat man eh schon den speziellen morde ff vote ausgelöst ;)","replies":[{"poster":"Veezey","date":"2015-06-13T13:21:47.280+0000","up_votes":2,"down_votes":0,"body":"Da fragt man sich doch, wann Riot diesen Free Elo Champ mal nerft :D","replies":[]}]}]}]}]}]},{"poster":"CCG Juuzou","date":"2015-06-13T12:23:44.997+0000","up_votes":1,"down_votes":0,"body":"Erstmal Morde vs Talon haste als Talon sowieso schlechte Karten, 2. hat er keine Mobility und ich meine KEINE Mobility, natürlich hat er dann entweder extremen Schaden oder Sustain/Tankyness (in Ap Mordes fall ne Mischung aus beidem)","replies":[]},{"poster":"Bergelmir32","date":"2015-06-13T11:56:24.318+0000","up_votes":1,"down_votes":0,"body":"huehuehuehue","replies":[]}]} |
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