bert-base-uncased-test_64_100

This model is a fine-tuned version of bert-base-uncased on the None dataset. It achieves the following results on the evaluation set:

  • Loss: 1.5041
  • F1: {'f1': 0.796440489432703}
  • Accuracy: {'accuracy': 0.7804}

Model description

More information needed

Intended uses & limitations

More information needed

Training and evaluation data

More information needed

Training procedure

Training hyperparameters

The following hyperparameters were used during training:

  • learning_rate: 0.0001
  • train_batch_size: 16
  • eval_batch_size: 16
  • seed: 42
  • optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08
  • lr_scheduler_type: linear
  • num_epochs: 500

Training results

Training Loss Epoch Step Validation Loss F1 Accuracy
No log 1.0 7 0.6982 {'f1': 0.004784688995215311} {'accuracy': 0.5008}
No log 2.0 14 0.6885 {'f1': 0.655367231638418} {'accuracy': 0.5364}
No log 3.0 21 0.6874 {'f1': 0.6617354196301565} {'accuracy': 0.5244}
No log 4.0 28 0.6822 {'f1': 0.6497193793331132} {'accuracy': 0.5756}
No log 5.0 35 0.6786 {'f1': 0.5570291777188329} {'accuracy': 0.5992}
No log 6.0 42 0.6741 {'f1': 0.6100355590675621} {'accuracy': 0.6052}
No log 7.0 49 0.6706 {'f1': 0.4816700610997964} {'accuracy': 0.5928}
No log 8.0 56 0.6654 {'f1': 0.48136645962732916} {'accuracy': 0.5992}
No log 9.0 63 0.6520 {'f1': 0.564531104921077} {'accuracy': 0.6248}
No log 10.0 70 0.6316 {'f1': 0.669652855543113} {'accuracy': 0.646}
No log 11.0 77 0.6364 {'f1': 0.5811885821244736} {'accuracy': 0.642}
No log 12.0 84 0.5995 {'f1': 0.6873545384018619} {'accuracy': 0.6776}
No log 13.0 91 0.5920 {'f1': 0.6943784639746634} {'accuracy': 0.6912}
No log 14.0 98 0.6104 {'f1': 0.673913043478261} {'accuracy': 0.688}
No log 15.0 105 0.5986 {'f1': 0.7101621194147885} {'accuracy': 0.7068}
No log 16.0 112 0.6088 {'f1': 0.7119205298013244} {'accuracy': 0.7216}
No log 17.0 119 0.6098 {'f1': 0.7373776908023484} {'accuracy': 0.7316}
No log 18.0 126 0.6355 {'f1': 0.7393403057119871} {'accuracy': 0.7408}
No log 19.0 133 0.6611 {'f1': 0.7576766555678875} {'accuracy': 0.738}
No log 20.0 140 0.6914 {'f1': 0.7586469023185101} {'accuracy': 0.746}
No log 21.0 147 0.7386 {'f1': 0.7356042173560423} {'accuracy': 0.7392}
No log 22.0 154 0.7983 {'f1': 0.7291054178916423} {'accuracy': 0.742}
No log 23.0 161 0.7992 {'f1': 0.7565485362095531} {'accuracy': 0.7472}
No log 24.0 168 0.8528 {'f1': 0.7316455696202532} {'accuracy': 0.7456}
No log 25.0 175 0.8415 {'f1': 0.759592795614722} {'accuracy': 0.7544}
No log 26.0 182 0.8850 {'f1': 0.770764119601329} {'accuracy': 0.7516}
No log 27.0 189 0.8879 {'f1': 0.7490759753593429} {'accuracy': 0.7556}
No log 28.0 196 0.9013 {'f1': 0.7703533026113671} {'accuracy': 0.7608}
No log 29.0 203 1.0318 {'f1': 0.7750791974656812} {'accuracy': 0.7444}
No log 30.0 210 0.9493 {'f1': 0.7475165562913907} {'accuracy': 0.756}
No log 31.0 217 0.9683 {'f1': 0.7755102040816327} {'accuracy': 0.7624}
No log 32.0 224 1.0889 {'f1': 0.7715091678420309} {'accuracy': 0.7408}
No log 33.0 231 1.0272 {'f1': 0.7374631268436579} {'accuracy': 0.7508}
No log 34.0 238 1.0058 {'f1': 0.7601121345614739} {'accuracy': 0.7604}
No log 35.0 245 1.0153 {'f1': 0.7748165314793356} {'accuracy': 0.7668}
No log 36.0 252 1.0568 {'f1': 0.7759197324414715} {'accuracy': 0.7588}
No log 37.0 259 1.1076 {'f1': 0.7738910926794085} {'accuracy': 0.7492}
No log 38.0 266 1.0427 {'f1': 0.7558666117743927} {'accuracy': 0.7628}
No log 39.0 273 1.0863 {'f1': 0.7808269301134284} {'accuracy': 0.7604}
No log 40.0 280 1.1665 {'f1': 0.7790738776952988} {'accuracy': 0.75}
No log 41.0 287 1.0454 {'f1': 0.7766692248656946} {'accuracy': 0.7672}
No log 42.0 294 1.0836 {'f1': 0.7832840236686389} {'accuracy': 0.7656}
No log 43.0 301 1.1531 {'f1': 0.7792486583184258} {'accuracy': 0.7532}
No log 44.0 308 1.0566 {'f1': 0.773688332028191} {'accuracy': 0.7688}
No log 45.0 315 1.3225 {'f1': 0.7732971873941037} {'accuracy': 0.7324}
No log 46.0 322 1.1126 {'f1': 0.7831192660550459} {'accuracy': 0.7636}
No log 47.0 329 1.0526 {'f1': 0.7771653543307088} {'accuracy': 0.7736}
No log 48.0 336 1.0584 {'f1': 0.7826777910210567} {'accuracy': 0.7812}
No log 49.0 343 1.0694 {'f1': 0.7797527047913447} {'accuracy': 0.772}
No log 50.0 350 1.1168 {'f1': 0.7819940476190476} {'accuracy': 0.7656}
No log 51.0 357 1.0804 {'f1': 0.7815028901734103} {'accuracy': 0.7732}
No log 52.0 364 1.2250 {'f1': 0.7811280595956013} {'accuracy': 0.7532}
No log 53.0 371 1.1277 {'f1': 0.7861356932153392} {'accuracy': 0.768}
No log 54.0 378 1.0646 {'f1': 0.7837190742218675} {'accuracy': 0.7832}
No log 55.0 385 1.1001 {'f1': 0.7902439024390244} {'accuracy': 0.7764}
No log 56.0 392 1.2776 {'f1': 0.7834907310248339} {'accuracy': 0.7524}
No log 57.0 399 1.2173 {'f1': 0.7844118698605649} {'accuracy': 0.7588}
No log 58.0 406 1.0998 {'f1': 0.7883880825057296} {'accuracy': 0.7784}
No log 59.0 413 1.0903 {'f1': 0.7832730197024528} {'accuracy': 0.7844}
No log 60.0 420 1.0943 {'f1': 0.7891050583657588} {'accuracy': 0.7832}
No log 61.0 427 1.1423 {'f1': 0.7883971736705095} {'accuracy': 0.7724}
No log 62.0 434 1.1620 {'f1': 0.7876106194690266} {'accuracy': 0.7696}
No log 63.0 441 1.1627 {'f1': 0.7887740029542099} {'accuracy': 0.7712}
No log 64.0 448 1.1474 {'f1': 0.7914798206278026} {'accuracy': 0.7768}
No log 65.0 455 1.1109 {'f1': 0.7910447761194029} {'accuracy': 0.7872}
No log 66.0 462 1.1295 {'f1': 0.7908221797323136} {'accuracy': 0.7812}
No log 67.0 469 1.1479 {'f1': 0.7931947069943289} {'accuracy': 0.7812}
No log 68.0 476 1.1624 {'f1': 0.7941397445529677} {'accuracy': 0.7808}
No log 69.0 483 1.1639 {'f1': 0.7942835652500941} {'accuracy': 0.7812}
No log 70.0 490 1.1614 {'f1': 0.7933509633547412} {'accuracy': 0.7812}
No log 71.0 497 1.1656 {'f1': 0.7939622641509434} {'accuracy': 0.7816}
0.1405 72.0 504 1.1664 {'f1': 0.7933509633547412} {'accuracy': 0.7812}
0.1405 73.0 511 1.1431 {'f1': 0.7895760404511865} {'accuracy': 0.7836}
0.1405 74.0 518 1.1435 {'f1': 0.7889763779527559} {'accuracy': 0.7856}
0.1405 75.0 525 1.1507 {'f1': 0.7900852052672346} {'accuracy': 0.7832}
0.1405 76.0 532 1.1787 {'f1': 0.7936627687665032} {'accuracy': 0.7812}
0.1405 77.0 539 1.2244 {'f1': 0.7876561351947098} {'accuracy': 0.7688}
0.1405 78.0 546 1.2429 {'f1': 0.7886297376093294} {'accuracy': 0.768}
0.1405 79.0 553 1.2167 {'f1': 0.7912495365220615} {'accuracy': 0.7748}
0.1405 80.0 560 1.1840 {'f1': 0.7912087912087912} {'accuracy': 0.7796}
0.1405 81.0 567 1.1756 {'f1': 0.7903963414634146} {'accuracy': 0.78}
0.1405 82.0 574 1.1744 {'f1': 0.7900383141762451} {'accuracy': 0.7808}
0.1405 83.0 581 1.1755 {'f1': 0.7894131185270427} {'accuracy': 0.7804}
0.1405 84.0 588 1.1790 {'f1': 0.7898966704936855} {'accuracy': 0.7804}
0.1405 85.0 595 1.1849 {'f1': 0.7897943640517898} {'accuracy': 0.7792}
0.1405 86.0 602 1.1950 {'f1': 0.7901328273244782} {'accuracy': 0.7788}
0.1405 87.0 609 1.2082 {'f1': 0.79155672823219} {'accuracy': 0.7788}
0.1405 88.0 616 1.2207 {'f1': 0.7940074906367041} {'accuracy': 0.78}
0.1405 89.0 623 1.2201 {'f1': 0.7935435435435436} {'accuracy': 0.78}
0.1405 90.0 630 1.2179 {'f1': 0.7930775018811136} {'accuracy': 0.78}
0.1405 91.0 637 1.2169 {'f1': 0.7918552036199096} {'accuracy': 0.7792}
0.1405 92.0 644 1.2162 {'f1': 0.7916981132075471} {'accuracy': 0.7792}
0.1405 93.0 651 1.2158 {'f1': 0.791981845688351} {'accuracy': 0.78}
0.1405 94.0 658 1.2570 {'f1': 0.7619453924914678} {'accuracy': 0.7768}
0.1405 95.0 665 1.2645 {'f1': 0.7930780559646539} {'accuracy': 0.7752}
0.1405 96.0 672 1.3050 {'f1': 0.7886710239651417} {'accuracy': 0.7672}
0.1405 97.0 679 1.2435 {'f1': 0.7745713090757006} {'accuracy': 0.7844}
0.1405 98.0 686 1.2083 {'f1': 0.7878548895899053} {'accuracy': 0.7848}
0.1405 99.0 693 1.2364 {'f1': 0.7959028831562974} {'accuracy': 0.7848}
0.1405 100.0 700 1.2611 {'f1': 0.7940074906367041} {'accuracy': 0.78}
0.1405 101.0 707 1.2721 {'f1': 0.7926920208799404} {'accuracy': 0.7776}
0.1405 102.0 714 1.2760 {'f1': 0.7919762258543834} {'accuracy': 0.776}
0.1405 103.0 721 1.2535 {'f1': 0.7950263752825923} {'accuracy': 0.7824}
0.1405 104.0 728 1.2403 {'f1': 0.7968036529680366} {'accuracy': 0.7864}
0.1405 105.0 735 1.2373 {'f1': 0.7934200459066564} {'accuracy': 0.784}
0.1405 106.0 742 1.2427 {'f1': 0.7963456414160639} {'accuracy': 0.786}
0.1405 107.0 749 1.2564 {'f1': 0.7965269913174783} {'accuracy': 0.7844}
0.1405 108.0 756 1.2666 {'f1': 0.7950450450450449} {'accuracy': 0.7816}
0.1405 109.0 763 1.2703 {'f1': 0.7944486121530383} {'accuracy': 0.7808}
0.1405 110.0 770 1.2737 {'f1': 0.7946026986506746} {'accuracy': 0.7808}
0.1405 111.0 777 1.2735 {'f1': 0.7944486121530383} {'accuracy': 0.7808}
0.1405 112.0 784 1.2749 {'f1': 0.7944486121530383} {'accuracy': 0.7808}
0.1405 113.0 791 1.2706 {'f1': 0.7959413754227733} {'accuracy': 0.7828}
0.1405 114.0 798 1.2579 {'f1': 0.7962049335863377} {'accuracy': 0.7852}
0.1405 115.0 805 1.2497 {'f1': 0.7955589586523738} {'accuracy': 0.7864}
0.1405 116.0 812 1.2481 {'f1': 0.79293123319247} {'accuracy': 0.7844}
0.1405 117.0 819 1.2496 {'f1': 0.7785069729286301} {'accuracy': 0.784}
0.1405 118.0 826 1.2386 {'f1': 0.7910447761194029} {'accuracy': 0.7872}
0.1405 119.0 833 1.3391 {'f1': 0.7925493060628196} {'accuracy': 0.7728}
0.1405 120.0 840 1.4218 {'f1': 0.7887424296401851} {'accuracy': 0.7628}
0.1405 121.0 847 1.2557 {'f1': 0.79155260070395} {'accuracy': 0.7868}
0.1405 122.0 854 1.2889 {'f1': 0.7707032875572202} {'accuracy': 0.7796}
0.1405 123.0 861 1.3041 {'f1': 0.7664570230607967} {'accuracy': 0.7772}
0.1405 124.0 868 1.4518 {'f1': 0.7878359264497878} {'accuracy': 0.76}
0.1405 125.0 875 1.3888 {'f1': 0.7893792608539649} {'accuracy': 0.7652}
0.1405 126.0 882 1.2520 {'f1': 0.793196752995748} {'accuracy': 0.786}
0.1405 127.0 889 1.2419 {'f1': 0.7889245585874799} {'accuracy': 0.7896}
0.1405 128.0 896 1.2470 {'f1': 0.7842660178426601} {'accuracy': 0.7872}
0.1405 129.0 903 1.2449 {'f1': 0.7887323943661971} {'accuracy': 0.79}
0.1405 130.0 910 1.2444 {'f1': 0.7938021454112039} {'accuracy': 0.7924}
0.1405 131.0 917 1.2492 {'f1': 0.795133437990581} {'accuracy': 0.7912}
0.1405 132.0 924 1.2570 {'f1': 0.7928765001935733} {'accuracy': 0.786}
0.1405 133.0 931 1.2660 {'f1': 0.7923224568138196} {'accuracy': 0.7836}
0.1405 134.0 938 1.2749 {'f1': 0.7928271652041207} {'accuracy': 0.7828}
0.1405 135.0 945 1.2832 {'f1': 0.7934700075930143} {'accuracy': 0.7824}
0.1405 136.0 952 1.2702 {'f1': 0.7940161104718065} {'accuracy': 0.7852}
0.1405 137.0 959 1.2620 {'f1': 0.7939464493597206} {'accuracy': 0.7876}
0.1405 138.0 966 1.2597 {'f1': 0.7929549902152642} {'accuracy': 0.7884}
0.1405 139.0 973 1.3074 {'f1': 0.7920270778488154} {'accuracy': 0.7788}
0.1405 140.0 980 1.3511 {'f1': 0.7921742340346991} {'accuracy': 0.7748}
0.1405 141.0 987 1.4323 {'f1': 0.7901146131805157} {'accuracy': 0.7656}
0.1405 142.0 994 1.5756 {'f1': 0.7842866988283942} {'accuracy': 0.7496}
0.0009 143.0 1001 1.5489 {'f1': 0.7862595419847328} {'accuracy': 0.7536}
0.0009 144.0 1008 1.3006 {'f1': 0.7898187427689936} {'accuracy': 0.782}
0.0009 145.0 1015 1.5527 {'f1': 0.7151348879743941} {'accuracy': 0.7508}
0.0009 146.0 1022 1.3876 {'f1': 0.751592356687898} {'accuracy': 0.766}
0.0009 147.0 1029 1.3456 {'f1': 0.7812752219531881} {'accuracy': 0.7832}
0.0009 148.0 1036 1.3554 {'f1': 0.7858255451713395} {'accuracy': 0.78}
0.0009 149.0 1043 1.3710 {'f1': 0.787201233616037} {'accuracy': 0.7792}
0.0009 150.0 1050 1.3786 {'f1': 0.7864823348694318} {'accuracy': 0.7776}
0.0009 151.0 1057 1.3805 {'f1': 0.7863444572305331} {'accuracy': 0.7772}
0.0009 152.0 1064 1.3809 {'f1': 0.7869481765834931} {'accuracy': 0.778}
0.0009 153.0 1071 1.3814 {'f1': 0.7869481765834931} {'accuracy': 0.778}
0.0009 154.0 1078 1.3823 {'f1': 0.7869481765834931} {'accuracy': 0.778}
0.0009 155.0 1085 1.3839 {'f1': 0.7866462010744435} {'accuracy': 0.7776}
0.0009 156.0 1092 1.3770 {'f1': 0.787037037037037} {'accuracy': 0.7792}
0.0009 157.0 1099 1.3703 {'f1': 0.7863777089783281} {'accuracy': 0.7792}
0.0009 158.0 1106 1.3701 {'f1': 0.7862122385747482} {'accuracy': 0.7792}
0.0009 159.0 1113 1.3721 {'f1': 0.7862122385747482} {'accuracy': 0.7792}
0.0009 160.0 1120 1.3742 {'f1': 0.7856037151702787} {'accuracy': 0.7784}
0.0009 161.0 1127 1.3755 {'f1': 0.786073500967118} {'accuracy': 0.7788}
0.0009 162.0 1134 1.3754 {'f1': 0.785907859078591} {'accuracy': 0.7788}
0.0009 163.0 1141 1.3756 {'f1': 0.785907859078591} {'accuracy': 0.7788}
0.0009 164.0 1148 1.3778 {'f1': 0.785907859078591} {'accuracy': 0.7788}
0.0009 165.0 1155 1.3824 {'f1': 0.7868725868725869} {'accuracy': 0.7792}
0.0009 166.0 1162 1.4059 {'f1': 0.7896930655551344} {'accuracy': 0.778}
0.0009 167.0 1169 1.4486 {'f1': 0.7876534027519524} {'accuracy': 0.7716}
0.0009 168.0 1176 1.4664 {'f1': 0.787878787878788} {'accuracy': 0.7704}
0.0009 169.0 1183 1.4689 {'f1': 0.7880354505169868} {'accuracy': 0.7704}
0.0009 170.0 1190 1.4654 {'f1': 0.7881700554528651} {'accuracy': 0.7708}
0.0009 171.0 1197 1.4576 {'f1': 0.7882832777159807} {'accuracy': 0.7716}
0.0009 172.0 1204 1.4436 {'f1': 0.7855277881387541} {'accuracy': 0.77}
0.0009 173.0 1211 1.4326 {'f1': 0.7857410881801125} {'accuracy': 0.7716}
0.0009 174.0 1218 1.4210 {'f1': 0.7891361750282913} {'accuracy': 0.7764}
0.0009 175.0 1225 1.4110 {'f1': 0.790909090909091} {'accuracy': 0.7792}
0.0009 176.0 1232 1.4059 {'f1': 0.7894937190711839} {'accuracy': 0.7788}
0.0009 177.0 1239 1.4015 {'f1': 0.7909992372234935} {'accuracy': 0.7808}
0.0009 178.0 1246 1.3992 {'f1': 0.7900763358778626} {'accuracy': 0.78}
0.0009 179.0 1253 1.3985 {'f1': 0.7892925430210325} {'accuracy': 0.7796}
0.0009 180.0 1260 1.3968 {'f1': 0.7905017234775948} {'accuracy': 0.7812}
0.0009 181.0 1267 1.4007 {'f1': 0.7900763358778626} {'accuracy': 0.78}
0.0009 182.0 1274 1.4019 {'f1': 0.7900763358778626} {'accuracy': 0.78}
0.0009 183.0 1281 1.3990 {'f1': 0.7918898240244836} {'accuracy': 0.7824}
0.0009 184.0 1288 1.3984 {'f1': 0.7921928817451205} {'accuracy': 0.7828}
0.0009 185.0 1295 1.3986 {'f1': 0.7915708812260537} {'accuracy': 0.7824}
0.0009 186.0 1302 1.3988 {'f1': 0.7917146144994246} {'accuracy': 0.7828}
0.0009 187.0 1309 1.4010 {'f1': 0.7918898240244836} {'accuracy': 0.7824}
0.0009 188.0 1316 1.4036 {'f1': 0.7923518164435946} {'accuracy': 0.7828}
0.0009 189.0 1323 1.3966 {'f1': 0.7923076923076923} {'accuracy': 0.784}
0.0009 190.0 1330 1.3964 {'f1': 0.7926125432858792} {'accuracy': 0.7844}
0.0009 191.0 1337 1.3972 {'f1': 0.7926125432858792} {'accuracy': 0.7844}
0.0009 192.0 1344 1.3977 {'f1': 0.7926125432858792} {'accuracy': 0.7844}
0.0009 193.0 1351 1.3970 {'f1': 0.792758089368259} {'accuracy': 0.7848}
0.0009 194.0 1358 1.3968 {'f1': 0.792758089368259} {'accuracy': 0.7848}
0.0009 195.0 1365 1.3972 {'f1': 0.7922928709055876} {'accuracy': 0.7844}
0.0009 196.0 1372 1.3985 {'f1': 0.792758089368259} {'accuracy': 0.7848}
0.0009 197.0 1379 1.4008 {'f1': 0.7932229495571813} {'accuracy': 0.7852}
0.0009 198.0 1386 1.4017 {'f1': 0.7932229495571813} {'accuracy': 0.7852}
0.0009 199.0 1393 1.4018 {'f1': 0.7932229495571813} {'accuracy': 0.7852}
0.0009 200.0 1400 1.4011 {'f1': 0.7922928709055876} {'accuracy': 0.7844}
0.0009 201.0 1407 1.4041 {'f1': 0.7941515967679877} {'accuracy': 0.786}
0.0009 202.0 1414 1.4072 {'f1': 0.7929447852760737} {'accuracy': 0.784}
0.0009 203.0 1421 1.4697 {'f1': 0.7874953479717157} {'accuracy': 0.7716}
0.0009 204.0 1428 1.5064 {'f1': 0.7891256429096254} {'accuracy': 0.7704}
0.0009 205.0 1435 1.5113 {'f1': 0.788546255506608} {'accuracy': 0.7696}
0.0009 206.0 1442 1.4517 {'f1': 0.7872420262664164} {'accuracy': 0.7732}
0.0009 207.0 1449 1.4151 {'f1': 0.7929447852760737} {'accuracy': 0.784}
0.0009 208.0 1456 1.4060 {'f1': 0.7896365042536735} {'accuracy': 0.7824}
0.0009 209.0 1463 1.4032 {'f1': 0.7895760404511865} {'accuracy': 0.7836}
0.0009 210.0 1470 1.4043 {'f1': 0.7895760404511865} {'accuracy': 0.7836}
0.0009 211.0 1477 1.4061 {'f1': 0.7889837083010085} {'accuracy': 0.7824}
0.0009 212.0 1484 1.4080 {'f1': 0.7900852052672346} {'accuracy': 0.7832}
0.0009 213.0 1491 1.4099 {'f1': 0.7896365042536735} {'accuracy': 0.7824}
0.0009 214.0 1498 1.4116 {'f1': 0.7902665121668598} {'accuracy': 0.7828}
0.0001 215.0 1505 1.4136 {'f1': 0.7918272937548188} {'accuracy': 0.784}
0.0001 216.0 1512 1.4155 {'f1': 0.7918272937548188} {'accuracy': 0.784}
0.0001 217.0 1519 1.4240 {'f1': 0.7643097643097643} {'accuracy': 0.776}
0.0001 218.0 1526 1.5173 {'f1': 0.7425786442179884} {'accuracy': 0.7676}
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0.0 440.0 3080 1.4998 {'f1': 0.7961452928094884} {'accuracy': 0.78}
0.0 441.0 3087 1.4999 {'f1': 0.7961452928094884} {'accuracy': 0.78}
0.0 442.0 3094 1.5000 {'f1': 0.7961452928094884} {'accuracy': 0.78}
0.0 443.0 3101 1.5003 {'f1': 0.7961452928094884} {'accuracy': 0.78}
0.0 444.0 3108 1.5005 {'f1': 0.7961452928094884} {'accuracy': 0.78}
0.0 445.0 3115 1.5005 {'f1': 0.7961452928094884} {'accuracy': 0.78}
0.0 446.0 3122 1.5002 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 447.0 3129 1.5000 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 448.0 3136 1.4999 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 449.0 3143 1.4999 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 450.0 3150 1.5001 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 451.0 3157 1.5003 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 452.0 3164 1.5006 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 453.0 3171 1.5007 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 454.0 3178 1.5007 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 455.0 3185 1.5007 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 456.0 3192 1.4999 {'f1': 0.7962894248608535} {'accuracy': 0.7804}
0.0 457.0 3199 1.4997 {'f1': 0.7968808020794653} {'accuracy': 0.7812}
0.0 458.0 3206 1.4995 {'f1': 0.7968808020794653} {'accuracy': 0.7812}
0.0 459.0 3213 1.4996 {'f1': 0.7971768202080238} {'accuracy': 0.7816}
0.0 460.0 3220 1.4997 {'f1': 0.7968808020794653} {'accuracy': 0.7812}
0.0 461.0 3227 1.4999 {'f1': 0.7968808020794653} {'accuracy': 0.7812}
0.0 462.0 3234 1.5001 {'f1': 0.7968808020794653} {'accuracy': 0.7812}
0.0 463.0 3241 1.5006 {'f1': 0.7962894248608535} {'accuracy': 0.7804}
0.0 464.0 3248 1.5008 {'f1': 0.7962894248608535} {'accuracy': 0.7804}
0.0 465.0 3255 1.5010 {'f1': 0.7962894248608535} {'accuracy': 0.7804}
0.0 466.0 3262 1.5010 {'f1': 0.7962894248608535} {'accuracy': 0.7804}
0.0 467.0 3269 1.5012 {'f1': 0.7962894248608535} {'accuracy': 0.7804}
0.0 468.0 3276 1.5014 {'f1': 0.7967359050445103} {'accuracy': 0.7808}
0.0 469.0 3283 1.5015 {'f1': 0.7967359050445103} {'accuracy': 0.7808}
0.0 470.0 3290 1.5017 {'f1': 0.7967359050445103} {'accuracy': 0.7808}
0.0 471.0 3297 1.5020 {'f1': 0.7967359050445103} {'accuracy': 0.7808}
0.0 472.0 3304 1.5022 {'f1': 0.7967359050445103} {'accuracy': 0.7808}
0.0 473.0 3311 1.5023 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 474.0 3318 1.5020 {'f1': 0.7967359050445103} {'accuracy': 0.7808}
0.0 475.0 3325 1.5020 {'f1': 0.7967359050445103} {'accuracy': 0.7808}
0.0 476.0 3332 1.5021 {'f1': 0.7967359050445103} {'accuracy': 0.7808}
0.0 477.0 3339 1.5020 {'f1': 0.7967359050445103} {'accuracy': 0.7808}
0.0 478.0 3346 1.5025 {'f1': 0.7967359050445103} {'accuracy': 0.7808}
0.0 479.0 3353 1.5029 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 480.0 3360 1.5032 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 481.0 3367 1.5035 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 482.0 3374 1.5036 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 483.0 3381 1.5036 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 484.0 3388 1.5037 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 485.0 3395 1.5037 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 486.0 3402 1.5037 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 487.0 3409 1.5036 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 488.0 3416 1.5036 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 489.0 3423 1.5030 {'f1': 0.7967359050445103} {'accuracy': 0.7808}
0.0 490.0 3430 1.5028 {'f1': 0.7967359050445103} {'accuracy': 0.7808}
0.0 491.0 3437 1.5027 {'f1': 0.7967359050445103} {'accuracy': 0.7808}
0.0 492.0 3444 1.5026 {'f1': 0.7967359050445103} {'accuracy': 0.7808}
0.0 493.0 3451 1.5026 {'f1': 0.7967359050445103} {'accuracy': 0.7808}
0.0 494.0 3458 1.5033 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 495.0 3465 1.5041 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 496.0 3472 1.5042 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 497.0 3479 1.5041 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 498.0 3486 1.5041 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 499.0 3493 1.5041 {'f1': 0.796440489432703} {'accuracy': 0.7804}
0.0 500.0 3500 1.5041 {'f1': 0.796440489432703} {'accuracy': 0.7804}

Framework versions

  • Transformers 4.29.2
  • Pytorch 2.0.1+cu117
  • Datasets 2.12.0
  • Tokenizers 0.13.3
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