Datasets:
sample_id int64 | sha256 string | label_int int32 | label_str string | timestamp string | email_source_file string | email_sender string | email_receiver string | email_date string | email_subject string | email_urls_flag string | email_has_header string | email_id_source string | flag_timestamp_missing bool | hash_type string | feature_fingerprint_sha256 string | _group_key string | _group_key_type string | _is_duplicate_group bool | _keep_row bool | _dedup_reason string |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
0 | 2b125599e608f2a1ccf395267bf7cf6031e80e997d94023e2d1707aa85935994 | 0 | legitimate | null | Ling.csv | job posting - apple-iss research center | 0 | 0 | ||job posting - apple-iss research center | true | sha256 | 4a7109ba629f5ac7cdd5e9d2c4955102326104d1ee148169ad7b61937d9b71df | ||job posting - apple-iss research center | url_norm | false | true | unique_group | |||
1 | 565d240f5343e625ae579a4d45a770f1f02c6368b5ed4d06da4fbe6f47c28866 | 0 | legitimate | null | Ling.csv | 0 | 0 | || | true | sha256 | 49d7f0a0ba8ed3a52f7465dbd642512747f637a7c7664e6c364da4caf919d680 | || | url_norm | true | true | kept_first_in_group | ||||
2 | 3f44261cfb96099373d18ee101fe03fa997487a099cc932f91d165be461d8fad | 0 | legitimate | null | Ling.csv | query : letter frequencies for text identification | 0 | 0 | ||query : letter frequencies for text identification | true | sha256 | 0a9c700c6d9713cf1190a7989b0dab94fef2712d35fb262ae48df7c12b8282bb | ||query : letter frequencies for text identification | url_norm | false | true | unique_group | |||
3 | 15f2f022fffe9ebddb8f4e6c3df5c1f6f1c0298aa7a77d85a8f8ea30be21830c | 0 | legitimate | null | Ling.csv | risk | 0 | 0 | ||risk | true | sha256 | ae0d337fbe10d29056ea4907a08615ff2d524578536c512f46771d6f3b81350a | ||risk | url_norm | false | true | unique_group | |||
4 | 4cc6d02ab10780994b7e9317aad4efb2e3102eea290e220b8d55c7a27ecd47d1 | 0 | legitimate | null | Ling.csv | request book information | 0 | 0 | ||request book information | true | sha256 | d702f87bb2acd79248c6fda7144b0f3265d3a4d5ca676f9104d746893832c3fc | ||request book information | url_norm | false | true | unique_group | |||
5 | 75e6723b8572736e281003b7669d186dd7ce7575f0339c766f9ff1473b2b6832 | 0 | legitimate | null | Ling.csv | call for abstracts : optimality in syntactic theory | 0 | 0 | ||call for abstracts : optimality in syntactic theory | true | sha256 | bf0bec1313eb096f30366f7b2e0a69cc47982773b0053a8e0b817f5d11338196 | ||call for abstracts : optimality in syntactic theory | url_norm | false | true | unique_group | |||
6 | 1b310e593603842c6cfa2a0738c2b93aeceb5bdfc55042899607eac784db48bb | 0 | legitimate | null | Ling.csv | m . a . in scandinavian linguistics | 0 | 0 | ||m . a . in scandinavian linguistics | true | sha256 | 2f4bfc128871648c02e95063a3e5a88dfda20b52d8eb6fc2df076422af99631c | ||m . a . in scandinavian linguistics | url_norm | true | true | kept_first_in_group | |||
7 | 442db767ff5c4613d078b3fb9c691cca8b32c6b2d713de0afe0ecd765ced61db | 0 | legitimate | null | Ling.csv | call for papers : linguistics session of the m / mla | 0 | 0 | ||call for papers : linguistics session of the m / mla | true | sha256 | 9fe9d4ef1037d23c07d20857ed98b70c9f61b99e79227644279af3757912021d | ||call for papers : linguistics session of the m / mla | url_norm | false | true | unique_group | |||
8 | 3199400025e31d320534fbbf877ab157d4a55e2df2967f9c9710f17f26048552 | 0 | legitimate | null | Ling.csv | foreign language in commercials | 0 | 0 | ||foreign language in commercials | true | sha256 | 56c665e79f0d8bd207db39a0ce6798b79a2ef84f85623f3ab956894f2208b0d0 | ||foreign language in commercials | url_norm | false | true | unique_group | |||
9 | 61d12bccc73ab457fcbbef8f5da064f4b65120c522940d667436fa72fe2dbb87 | 0 | legitimate | null | Ling.csv | fulbright announcement : please post / disseminate to lists | 0 | 0 | ||fulbright announcement : please post / disseminate to lists | true | sha256 | e0b3d016bfa941c7704217f51c86ee0f13921abc1eec8e8d7515d203ecc65a74 | ||fulbright announcement : please post / disseminate to lists | url_norm | false | true | unique_group | |||
10 | b8a2b5dfd42da147049eb45b36cb459556fd0130d77ae089a62c9e106d3bbfe8 | 0 | legitimate | null | Ling.csv | gala ' 95 : call for papers | 0 | 0 | ||gala ' 95 : call for papers | true | sha256 | d4b4b36f29fddf87c642ac82eecf2bb76bd03f216ccb638244dc8552f0cdf646 | ||gala ' 95 : call for papers | url_norm | false | true | unique_group | |||
11 | 1aa9528d0007cee7eb732c72e93e0eba6a5e2b2e7e21cc5a0fc1b5c7d1dc6f73 | 0 | legitimate | null | Ling.csv | bu conf on language development ' 95 - announcement | 0 | 0 | ||bu conf on language development ' 95 - announcement | true | sha256 | 4c28b3a7680008dcae54092e4559c3e7bc48e35d411a1f488548c6e049a99b70 | ||bu conf on language development ' 95 - announcement | url_norm | false | true | unique_group | |||
12 | 91f1125b3dd41f6335ca7560c6f4df669aa23203eee08c733e9221f79b6f2ae3 | 0 | legitimate | null | Ling.csv | korean software for macintosh | 0 | 0 | ||korean software for macintosh | true | sha256 | 0c8a7569899ea684c5077669801cc1a2cd687b20fd0d7b4652d229ea1d7b99e8 | ||korean software for macintosh | url_norm | false | true | unique_group | |||
14 | b88e4f87b8cb18951981354d1554134e9c41372db04f0c78c7aa8f20d6156c30 | 0 | legitimate | null | Ling.csv | simultaneous prepositions and postpositions in pashto | 0 | 0 | ||simultaneous prepositions and postpositions in pashto | true | sha256 | 56e2c62716f2a3666a6cc0950928cc31a77ea1aeb8fc99fd057b2cee6ed965da | ||simultaneous prepositions and postpositions in pashto | url_norm | false | true | unique_group | |||
15 | df5d400c0729a6423b34cd78c304c265451415fa76877c1dfddc758262cb38ef | 0 | legitimate | null | Ling.csv | sum : imperatives without you subjects | 0 | 0 | ||sum : imperatives without you subjects | true | sha256 | b74205510c09570de98d5e4ab0ad662c1b30f3a75d30997471d9ac54b2d2317c | ||sum : imperatives without you subjects | url_norm | false | true | unique_group | |||
16 | d910a3678d8eccd6014b065a5b0ce7b0e04b40ee9052ddd2c01a2bdcf4ec26f1 | 0 | legitimate | null | Ling.csv | policies | 0 | 0 | ||policies | true | sha256 | 436c804d00f3699ce009fcfa4f9a43b33b8bfb0a4fbfaea4ed6707830a77c47a | ||policies | url_norm | false | true | unique_group | |||
17 | 9081c6b92072620395d5beee54cf9739e7e6b6b9397c4b78e3d1be3842509d4e | 0 | legitimate | null | Ling.csv | * * * correction to hellenistic greek announcement | 0 | 0 | ||* * * correction to hellenistic greek announcement | true | sha256 | d40594ab1ce6f3f95e3870804573cafb7eb4d6742aa0ab440d68ab400d77c4af | ||* * * correction to hellenistic greek announcement | url_norm | false | true | unique_group | |||
18 | f1e8445c88a6219851f514dd60d3560a316d70ec03224abcdc7b2c9c61572175 | 0 | legitimate | null | Ling.csv | question on audio samples | 0 | 0 | ||question on audio samples | true | sha256 | d6fcf8cd754533b4a6cfa37a804bffb372818b882f73df5bf1280e65eba7dbc0 | ||question on audio samples | url_norm | false | true | unique_group | |||
19 | a3babfd0fd42255326e3b508e21f5c99048349e59c96ec97803333605015d256 | 0 | legitimate | null | Ling.csv | sexism and language | 0 | 0 | ||sexism and language | true | sha256 | b97a3ae549675b7aa90a5b114a5bcc3e05f9eafb4285077bace564384bd258bb | ||sexism and language | url_norm | false | true | unique_group | |||
20 | 541475520273c9d62fa42c276f882ceb5d3e4557083739d72915de88d534cbc5 | 0 | legitimate | null | Ling.csv | teaching english in korea | 0 | 0 | ||teaching english in korea | true | sha256 | d9264d567fc4a69b9cef0af41a50dac06fcf488c2084022e3b9882627f85c381 | ||teaching english in korea | url_norm | false | true | unique_group | |||
21 | 6343f5f3c2381960b67db065a609d180bd3e27ab89d47ae9a61b8d4cfa13b6d9 | 1 | phishing | null | Ling.csv | free | 0 | 0 | ||free | true | sha256 | 1fc1df07696942bea58ec1245fb74bf8e3d65304d63b26b13733ff9d1dffc59e | ||free | url_norm | false | true | unique_group | |||
22 | 9232e2308533307b8525a1be18850de866f34733ed65a405d5acbae6409689f1 | 0 | legitimate | null | Ling.csv | email address for w . dressler | 0 | 0 | ||email address for w . dressler | true | sha256 | 097594d4a35de09adc38535f33f38fe29051156ac640fd5b9fd04d95df1281d3 | ||email address for w . dressler | url_norm | false | true | unique_group | |||
23 | ffb98ef4ca5bf0242ef7200c1fc0cf6f6c4001fd62c99ebbe6365d5d02b932bc | 0 | legitimate | null | Ling.csv | dhumbadji ! , journal for the history of language | 0 | 0 | ||dhumbadji ! , journal for the history of language | true | sha256 | 38a59635aa6a362439bf85316b7e47a75b9efea4b18ad663d086ef1c43f40f29 | ||dhumbadji ! , journal for the history of language | url_norm | false | true | unique_group | |||
24 | 6ff63ca85feac04caebd941bf7f021607f570d514096b16c401b8dbc71431c63 | 0 | legitimate | null | Ling.csv | question : quantitative information | 0 | 0 | ||question : quantitative information | true | sha256 | b9ef5057d4bf1b2e2a77a96e1a25aa3170e5ec839c7f5674729c697a1006f855 | ||question : quantitative information | url_norm | false | true | unique_group | |||
25 | 5ca1d14bf36249aba20625ae9fad58b52a7940209e62a426738ccef4898776ec | 0 | legitimate | null | Ling.csv | re : amharic | 0 | 0 | ||re : amharic | true | sha256 | ac886b8ec7d880672a77dbdbc8f80ce305d80e16138ecad887d510a23c144a55 | ||re : amharic | url_norm | false | true | unique_group | |||
26 | fb762462135e6b262543ae404353c8d7ce84a94ea18898bdd84ff162917454df | 0 | legitimate | null | Ling.csv | uniformitarianism | 0 | 0 | ||uniformitarianism | true | sha256 | 7e471896de16f32dcdbaf9ccbe59fcffca35a82585e4f5eda8a1e471275797c1 | ||uniformitarianism | url_norm | false | true | unique_group | |||
27 | 218e63d9e2dc91bf1b5299d0deb55146db585469a99b5fec6f9f3814438d0019 | 0 | legitimate | null | Ling.csv | re : 6 . 1094 , qs : phonemicity of writing | 0 | 0 | ||re : 6 . 1094 , qs : phonemicity of writing | true | sha256 | c504f9da37cf314b8476c2d4ceb9589b70d8ebc290c7ddb1be57e20b059ed718 | ||re : 6 . 1094 , qs : phonemicity of writing | url_norm | false | true | unique_group | |||
28 | 3117770cf15c8165967f9dfc22128ab6973c517330d87cd9cba4ec728723a66c | 0 | legitimate | null | Ling.csv | intensive summer arabic language institute | 0 | 0 | ||intensive summer arabic language institute | true | sha256 | 4189a576197b15e83a0673337d89a44d2695ecf78165ae99cbb0662debc05e80 | ||intensive summer arabic language institute | url_norm | false | true | unique_group | |||
29 | 3cd271a4903d588340087012118738217697d68b6c7c985a0902ee3af31da5b7 | 0 | legitimate | null | Ling.csv | lists on comparative literature | 0 | 0 | ||lists on comparative literature | true | sha256 | e31552b5c691abbb1800c6d7f88605f4d2b71a42fe775d133f5f646d63436d60 | ||lists on comparative literature | url_norm | false | true | unique_group | |||
30 | f9251f12e48fec974ce209b1596acb57b774e918e88ced4a489233244a976443 | 0 | legitimate | null | Ling.csv | call for abstracts | 0 | 0 | ||call for abstracts | true | sha256 | f492e5e25f2d665eb9960fb2b9816f0f089e09098f86db04728b45bcfbbf5504 | ||call for abstracts | url_norm | false | true | unique_group | |||
31 | 68290685e18b3328f14bff2023fc19e6846a8335f21c9026b031e98793a9bbe2 | 0 | legitimate | null | Ling.csv | call for papers ( rocling ) | 0 | 0 | ||call for papers ( rocling ) | true | sha256 | 1f112e071f24217ca5e7338b2aa5909b6969a4a269bb97fd3a0b1988021ea424 | ||call for papers ( rocling ) | url_norm | false | true | unique_group | |||
32 | 8274d739f84b2eeb257e910a45b36e698c476f1331ed875271d537b6b0634bbe | 0 | legitimate | null | Ling.csv | stress bibliography | 0 | 0 | ||stress bibliography | true | sha256 | 8c695c7844cc42261c69109647b241e23f5e79b2eb7648d55fbc3783a3c8cd83 | ||stress bibliography | url_norm | false | true | unique_group | |||
33 | 5fd5bdeb2c8ed0ea79266fc555c5f6dea15f63ec993a22ba44981de8eec74dbe | 0 | legitimate | null | Ling.csv | dependency grammar | 0 | 0 | ||dependency grammar | true | sha256 | 071802c657c049615142cbd4abd3c393abaccf90cff976790b7c37e468a3630c | ||dependency grammar | url_norm | false | true | unique_group | |||
34 | baa0b0da0fce81e398e1adf17a810408a91698dfe70aa0137c67c53bc662b34c | 0 | legitimate | null | Ling.csv | call papers - systemic workshop | 0 | 0 | ||call papers - systemic workshop | true | sha256 | 59128425d3b622cb54a5b261614e10719c93199648c29cce457ea7ed0f5437f6 | ||call papers - systemic workshop | url_norm | false | true | unique_group | |||
35 | 1bc8803b2b313e9242837afe9c0e7382c2f1d2586a0b6729d151f12202f4ac8f | 0 | legitimate | null | Ling.csv | re : 6 . 1049 , sum : e - mail citation | 0 | 0 | ||re : 6 . 1049 , sum : e - mail citation | true | sha256 | 0adaaa10660106b18fcb1245893e32a78b8f3aca60d276c0ec63530569f570f2 | ||re : 6 . 1049 , sum : e - mail citation | url_norm | false | true | unique_group | |||
36 | 26b205606327ad5273e5db58dbf2c826bb1ea66159010d376a695f1e6b892cfa | 0 | legitimate | null | Ling.csv | job announcement | 0 | 0 | ||job announcement | true | sha256 | 24184af729f4f7d2d069d573a9377017a5a7dfa76ebf1132ab57057d94f6fd09 | ||job announcement | url_norm | true | true | kept_first_in_group | |||
37 | 41a0bc38ed037828bc885fe459ab8bb7092d7ddf102821dfd19375e82a96ea9e | 0 | legitimate | null | Ling.csv | address change / changement d ' adresse | 0 | 0 | ||address change / changement d ' adresse | true | sha256 | 57d7255c655c0f7994549f7d7f5f126088d5233b3cb841c4f4d2dcd8098d67d4 | ||address change / changement d ' adresse | url_norm | false | true | unique_group | |||
38 | a9c288f464ec6fa013f5a9550a6b6848f413bfbb2e3e8dd60ffd4965c684520e | 1 | phishing | null | Ling.csv | the internet success toolbox | 0 | 0 | ||the internet success toolbox | true | sha256 | 0d9ca6ae321ca52daddada357dd37cf40d2aa33c07defbb8d2816c99ca125974 | ||the internet success toolbox | url_norm | false | true | unique_group | |||
39 | 9380acad5be995d6e19448adcbe1ed44e71916c7162bb7a8b77f0cf88c39f3c3 | 0 | legitimate | null | Ling.csv | job announcement - academia sinica | 0 | 0 | ||job announcement - academia sinica | true | sha256 | d9dd348ad279fea3d718ed1524f5c390dba47e964573cf3344c3e9fd4d92ea3e | ||job announcement - academia sinica | url_norm | false | true | unique_group | |||
40 | 3679909e2199dec2714cdc28d8f7caaeb8562068700e339dbcd1f74edd7e8673 | 0 | legitimate | null | Ling.csv | penn working papers | 0 | 0 | ||penn working papers | true | sha256 | f51b7a14df29b76cfcb67d9834404aab4f71842d55b7ae62e140fba95d7f6def | ||penn working papers | url_norm | false | true | unique_group | |||
41 | a2888e3a6c6e9b68530b26b6001913d111ccdbb79fdd8eb7f04a78ad9de88975 | 0 | legitimate | null | Ling.csv | icslp 96 | 0 | 0 | ||icslp 96 | true | sha256 | eadd725539b6eb1aca799eaf3b39d6b935bac119cb1c684a8500d016bd3c87d1 | ||icslp 96 | url_norm | false | true | unique_group | |||
42 | 120763bbd6d164bf96326d51e3fe4cd92a374bc1f85f589488cc950560077d1d | 0 | legitimate | null | Ling.csv | yiddish orthography | 0 | 0 | ||yiddish orthography | true | sha256 | 401f0b8ceef64b9e81b9affaaa2143ebe2715d5383898f2a35fa08b23943719a | ||yiddish orthography | url_norm | false | true | unique_group | |||
43 | 61d5d246cfa45a5b2c58475aee975a114903ba04697259db1ffbb5ba9e756d1a | 0 | legitimate | null | Ling.csv | recommendations on ling . font set for mac ? | 0 | 0 | ||recommendations on ling . font set for mac ? | true | sha256 | e4fdff74fd99e8829fbc335fb1ef7d7834497010953c1a6b10089a6dac820ae2 | ||recommendations on ling . font set for mac ? | url_norm | false | true | unique_group | |||
44 | 05e1e5b3042aaffc41ed59ee47ab58e1a04964117c51e3fb21f3d48e4b19efd7 | 0 | legitimate | null | Ling.csv | gurt 1995 ( conference program ) | 0 | 0 | ||gurt 1995 ( conference program ) | true | sha256 | ab6c76a3f5986502c2d0149fc624bc778d18840c30432e709722f5bca4686668 | ||gurt 1995 ( conference program ) | url_norm | false | true | unique_group | |||
45 | fc516fdfd5d822c1b3f2e0a65594775ff8509fcb16b29647cc31d6a511309687 | 0 | legitimate | null | Ling.csv | q : german linguistic terms | 0 | 0 | ||q : german linguistic terms | true | sha256 | 441f5d776b84be30f8d63d0871e0529a2a8d3bdfc6d8af54cf68bcc49b71263c | ||q : german linguistic terms | url_norm | false | true | unique_group | |||
46 | 7b9dc8e5dee08e096b14cabcbad43b20d122fcdba9cac0c68a746aa72ff87214 | 0 | legitimate | null | Ling.csv | esl curriculum | 0 | 0 | ||esl curriculum | true | sha256 | 0630aa0e34caacf0bb9ee7bc98a9a01dea46dddda668bdfd8ec815c9630f7310 | ||esl curriculum | url_norm | false | true | unique_group | |||
47 | 46ce94dbffd8e1d0ef150b94c3bf2273f2712a03498618262c71c85c7e387962 | 0 | legitimate | null | Ling.csv | esslli | 0 | 0 | ||esslli | true | sha256 | 7076c9f0586b70325ff05d7570cf719d5afd135a92769bd793ab3ececa3dfc9d | ||esslli | url_norm | false | true | unique_group | |||
48 | fb68f71b4e064c7a0790b514adda38b348dd0122cf7f7355caeab5f915424738 | 0 | legitimate | null | Ling.csv | disc . sex / lang | 0 | 0 | ||disc . sex / lang | true | sha256 | 5084eb3878ecf3ab88a1ad3588b08f62b0909529440585d1f83d2051efb8d4c2 | ||disc . sex / lang | url_norm | true | true | kept_first_in_group | |||
49 | ec0f28a17e1f736da58a3b166f67cd9caea4ceccf40341e2805a810f6ca0f799 | 0 | legitimate | null | Ling.csv | re : 6 . 1078 , re : 1053 , english only ( bilingualism ) | 0 | 0 | ||re : 6 . 1078 , re : 1053 , english only ( bilingualism ) | true | sha256 | 0ae1f6317e191b5c9591dc6ca5075494889f8c0dc1dc7d479a535a78784d7e40 | ||re : 6 . 1078 , re : 1053 , english only ( bilingualism ) | url_norm | false | true | unique_group | |||
50 | 7ef3473e05f22e406943ca3b8293d580da4e1519636fe82f47bb385e28406b77 | 0 | legitimate | null | Ling.csv | workshop on focus - 1st call for papers | 0 | 0 | ||workshop on focus - 1st call for papers | true | sha256 | 3ae676dba36054ed82b5959880c8832612f9b14cda23cd6b1d70ea1ebb9a211e | ||workshop on focus - 1st call for papers | url_norm | false | true | unique_group | |||
51 | 85bde3916064dda1dc2e36c1e2f6386c37e61d8f0c4daeda2db4ddf666bd901d | 0 | legitimate | null | Ling.csv | question : norwegian | 0 | 0 | ||question : norwegian | true | sha256 | 6fd0f411f7067d9b8da2395a6513d06ea46d41a12982843b82655f3749dbbe2d | ||question : norwegian | url_norm | false | true | unique_group | |||
52 | b774107e1a8bc12aab6224de6f7d85891a76acfec65d3a0697c6875fc20bd9f2 | 0 | legitimate | null | Ling.csv | idioms | 0 | 0 | ||idioms | true | sha256 | 7c2dd6b007b7da2fd101983c96c677fd63757a986e8412bf5eac565b9a668d4f | ||idioms | url_norm | false | true | unique_group | |||
53 | f9646676f45fe041436865a56ee750bbcad740c03e3facbce4378d1e3533b014 | 0 | legitimate | null | Ling.csv | cfp : workshop on spoken language generation and multimodal | 0 | 0 | ||cfp : workshop on spoken language generation and multimodal | true | sha256 | b5c6bd7c8c3e63bcc53ab764710a9d5903b12b5baa01103593313804786c4ae1 | ||cfp : workshop on spoken language generation and multimodal | url_norm | false | true | unique_group | |||
54 | 2803d7bd8db7664cc32eb82135ce7d6123bfddb9ef6aa4e64372a7bc11c2121d | 0 | legitimate | null | Ling.csv | q : influence of tone on writing | 0 | 0 | ||q : influence of tone on writing | true | sha256 | 2a5d2afbbbe380d7ab9bb254475e06b163b971ab3fe4ea0fc7f6b1c2aab240ff | ||q : influence of tone on writing | url_norm | false | true | unique_group | |||
55 | 9567ade92a31053e76f640c48bf87d5f6309d3d5386e45ed567b98a823c5d97e | 0 | legitimate | null | Ling.csv | citing e-texts | 0 | 0 | ||citing e-texts | true | sha256 | d0f6fe73ee2d8e8ecd56da76dab9d6584e895e558c16a74229c7f8d821ebf41d | ||citing e-texts | url_norm | false | true | unique_group | |||
56 | 02e747d7dc29b760b8dc29ed8ebfedc10ce2c3ffea4edfd6217393c8e892b09a | 0 | legitimate | null | Ling.csv | salford seminars | 0 | 0 | ||salford seminars | true | sha256 | f13e361976b0ca391b1ef519d82d4747224ff44eb900f1b7abbf74dd22db6483 | ||salford seminars | url_norm | false | true | unique_group | |||
57 | 0bda6752a63a5d0d2a79f1b67cdc1585972dfc5260ad0fc59c71fceb55f4a88e | 0 | legitimate | null | Ling.csv | query : latin and romance | 0 | 0 | ||query : latin and romance | true | sha256 | cd3cae7d96ef2711c612536d79d367b2904e7a8f5d68c0ab7f0ed4144be2b09c | ||query : latin and romance | url_norm | false | true | unique_group | |||
58 | cf9a51c04ba28fb2fa2123a4205d746a2ff4aaef501f43b1e5a0465de66f9dcd | 0 | legitimate | null | Ling.csv | voyeur de tons | 0 | 0 | ||voyeur de tons | true | sha256 | be4a24426659d6b4d4d3007c8b5e643fb8d7cdbe4efaf66323fcc6ca0390c076 | ||voyeur de tons | url_norm | false | true | unique_group | |||
59 | 9ad3b9cb5c1e31b22a2900fdc350e1c944ce2345182226866ccee9eab376bece | 0 | legitimate | null | Ling.csv | phrase identification | 0 | 0 | ||phrase identification | true | sha256 | 8c5e6a34d14b48bc954a5c813d216bde7b11f45840365ad8bd1896a609d1cf32 | ||phrase identification | url_norm | false | true | unique_group | |||
60 | f1cefda269dd5ba22134e75dd9e2d72f63d8b8321ac1cc65f204054f45d9fc87 | 0 | legitimate | null | Ling.csv | re : 6 . 185 ipa | 0 | 0 | ||re : 6 . 185 ipa | true | sha256 | 80614d854b9a3e7472508f41d8bd761a14f735b5fb3c99e00e135f0e205d6947 | ||re : 6 . 185 ipa | url_norm | true | true | kept_first_in_group | |||
61 | 9b98938b038506dbee86ec4ee2cd61eae67b25ee7b004f9496ebe0332dfbccda | 0 | legitimate | null | Ling.csv | slow spanish accent | 0 | 0 | ||slow spanish accent | true | sha256 | 5f5efb048ccb3660cdc476f320f3b5f32c9551625574e6ac432b899f10da0ed0 | ||slow spanish accent | url_norm | false | true | unique_group | |||
62 | 08826c677a8e1eb88a62dd4e41c947191da2e6d08f6c5aca37721e5c07958a3a | 0 | legitimate | null | Ling.csv | conf : translating literature and film | 0 | 0 | ||conf : translating literature and film | true | sha256 | 5c0d9eb1af647cf4918d5881e5047161aa32a11a444f68d688e52e97cab4649b | ||conf : translating literature and film | url_norm | false | true | unique_group | |||
63 | 3b23a8bb209aec48d9c6137c8232797900c438bf6466886d6f7bd935d6e81b95 | 0 | legitimate | null | Ling.csv | palindromes | 0 | 0 | ||palindromes | true | sha256 | 76390d2e32aef25f79da0aabda953b861765954abedca0e22e140c7d2f31df3d | ||palindromes | url_norm | false | true | unique_group | |||
64 | 4814b1352fe456cf2fd12664d909221eb2f5fb5f715fa6b6f29aeb04adfe8fa5 | 0 | legitimate | null | Ling.csv | holding / managing / hand | 0 | 0 | ||holding / managing / hand | true | sha256 | 2959ff301b81db07022b6b09370412b0bb80ffab154da7e8a01beafb6509cbf8 | ||holding / managing / hand | url_norm | false | true | unique_group | |||
65 | 7884cb7ac450bcdc86b6c6fc74b3f697efcc9acb1d879268c1f95a58970b06b0 | 0 | legitimate | null | Ling.csv | correction to call for abstracts | 0 | 0 | ||correction to call for abstracts | true | sha256 | 2f1df3a11df7bb3f609822c889d9750c717f8b9a29682143396b73e0ae2aa89c | ||correction to call for abstracts | url_norm | false | true | unique_group | |||
66 | d3275522d5f5bc9dab2b733e4ab9e60462789b426c9e0bb796160b720a4803ee | 0 | legitimate | null | Ling.csv | www servers | 0 | 0 | ||www servers | true | sha256 | 70c236a8de85b1354f0a60e10da8fd9040ef888de0ceec8778bf33e97dc21b4d | ||www servers | url_norm | false | true | unique_group | |||
67 | c40bd7cd356ee37addbc281159180bff4498e8589d785783e8d9422c7bb1963e | 0 | legitimate | null | Ling.csv | info request | 0 | 0 | ||info request | true | sha256 | 16f9271c0dfe02457cbfa860084e1b1cfc95f3ad60f634eb92510174f84d9f34 | ||info request | url_norm | false | true | unique_group | |||
68 | f22756eba58529be607084744e2552132a02c2aa3ff4ae633c989f4ecd3541d3 | 0 | legitimate | null | Ling.csv | words that are their own opposites ( part 2 ) | 0 | 0 | ||words that are their own opposites ( part 2 ) | true | sha256 | 95ab1f6bb981065153a277850be879a8498256140c920cf75fd0f113cd4f0812 | ||words that are their own opposites ( part 2 ) | url_norm | false | true | unique_group | |||
70 | c04db3b4a8e80d7e069ff9dc51adf5d1dea09805e0c18e206fd8ca1f4a19f71b | 0 | legitimate | null | Ling.csv | french / english neologisms | 0 | 0 | ||french / english neologisms | true | sha256 | a7812cae418b3c70f159c389923f55d5643cb07d2209227595d42d56dd84a8aa | ||french / english neologisms | url_norm | false | true | unique_group | |||
71 | c6444b26f1a1646e36236f4dfd626b45152432630cd90a808a2aaf54183206a5 | 0 | legitimate | null | Ling.csv | wrong lctl gopher path | 0 | 0 | ||wrong lctl gopher path | true | sha256 | d3678668e5103e7ca750d5551bb5cd54717767464be1b082cecab6fc95d96667 | ||wrong lctl gopher path | url_norm | false | true | unique_group | |||
72 | e1b9ea3542685e13f75b8d7d1725be6743ddf8513ab0816dd521fdac2f33da82 | 0 | legitimate | null | Ling.csv | qs : syllabus for english linguistics | 0 | 0 | ||qs : syllabus for english linguistics | true | sha256 | 71aeb4e5629d403ecf32ce6eb18005b39b27efe303546f7bee22bb3eab009004 | ||qs : syllabus for english linguistics | url_norm | false | true | unique_group | |||
73 | c4df24ae4c6383ea4cbf6529af03bd6867b906711a55032a829e63a12f45b3b6 | 0 | legitimate | null | Ling.csv | wccfl predication workshop preliminary program | 0 | 0 | ||wccfl predication workshop preliminary program | true | sha256 | c0eead56d15c9ec1b3945b96d8720032787eb92baa1dfda0b32ae43d5f9d72b9 | ||wccfl predication workshop preliminary program | url_norm | false | true | unique_group | |||
74 | 937db0b0afafa3e04b533129f40a90d5a45d1a93d76b70dfd0773d8db8f4f2fa | 0 | legitimate | null | Ling.csv | summer opportunities | 0 | 0 | ||summer opportunities | true | sha256 | 96638da9715ecd2db3b52d8494fdd6fcffc7e47b0700349660359f254ded9381 | ||summer opportunities | url_norm | false | true | unique_group | |||
75 | 8ef3d3ab2bfa97b30b6f69f68139831af5ae51f26d5d5afa0830cb2960cce22b | 0 | legitimate | null | Ling.csv | references in slavic syntax | 0 | 0 | ||references in slavic syntax | true | sha256 | 9bb26a1bbe4fd6e8a119ba428697b862a38cb3f105fe2e381d49ff8ade4086d2 | ||references in slavic syntax | url_norm | false | true | unique_group | |||
76 | fc1579b046141bf2443728bcc30b0105519c2c1bc2aae5e42064d2ba000c949c | 0 | legitimate | null | Ling.csv | grammatical relations and derived notions | 0 | 0 | ||grammatical relations and derived notions | true | sha256 | ccb6d7eba26a87d3d8019ebca32d09b4a3108b36d440be4bc0d4aae3462fefb9 | ||grammatical relations and derived notions | url_norm | false | true | unique_group | |||
77 | 61a2ee7e907b6fdb4c17ccd8ef1a82ee6963b7a4ca337170c075c92c6665828e | 0 | legitimate | null | Ling.csv | sapir - whorf | 0 | 0 | ||sapir - whorf | true | sha256 | b7f2b4cf0b6a968fe68e6a09d4f0ed9669d38aad2f94ff2d5518261d12e35d65 | ||sapir - whorf | url_norm | false | true | unique_group | |||
78 | 3cf9cc99ab2dc608c4901d46f615237a20b0c7cde2dc1c3c2d1df8fdd776edb4 | 0 | legitimate | null | Ling.csv | qs | 0 | 0 | ||qs | true | sha256 | 07978fd895153fb3a275c2ed67e3d824f4af3b84404e0396f90b58c9c16e7b3c | ||qs | url_norm | false | true | unique_group | |||
79 | 31893f36cd31e212f72fa8a0b07d29597503d8115f42b5eb271dec8b4ce9be8e | 0 | legitimate | null | Ling.csv | japanese specialist needed | 0 | 0 | ||japanese specialist needed | true | sha256 | b96fa92ac3e80df26741db026043919e45b8c7686cbbc1fd585c94ab8a9e0ddf | ||japanese specialist needed | url_norm | false | true | unique_group | |||
80 | 47b056fb0cb206398e65d9022cb4c8fbc18ca0d560a940b0773a6c64a49dd9fd | 0 | legitimate | null | Ling.csv | the other side of * galicismos * | 0 | 0 | ||the other side of * galicismos * | true | sha256 | 080cc965e851bb5f4c6dd94d7856d50428d48f96db88cbb05b5e5e825017c4a2 | ||the other side of * galicismos * | url_norm | false | true | unique_group | |||
81 | e0ac9b0aecad5fe37475db67d9ea7c8bca1cf640bf013e1516bf21ea225a2dbc | 0 | legitimate | null | Ling.csv | references on non-human language | 0 | 0 | ||references on non-human language | true | sha256 | 6fb82321b4d032d45cad4e0008acb0daceb865463504d418a3926c5f6122f794 | ||references on non-human language | url_norm | false | true | unique_group | |||
82 | e5d126edbfca6d3fb32d4dd5c7b22fe8526658e0e9cab9b2e13d57dc6b9e32b7 | 0 | legitimate | null | Ling.csv | sum : v - initial languages | 0 | 0 | ||sum : v - initial languages | true | sha256 | 5da27075bd061eed8222322cb44f6932a5df90668b70d0f55f97f45474129958 | ||sum : v - initial languages | url_norm | false | true | unique_group | |||
83 | 981f811807672db8b44866b73a82441bd85ece4087121f2e19320efd5a35519e | 0 | legitimate | null | Ling.csv | escol ' 95 | 0 | 0 | ||escol ' 95 | true | sha256 | be1926678425fe1a413b8c21fff5cac8544af25779772b46cf86fa49d825e9af | ||escol ' 95 | url_norm | false | true | unique_group | |||
84 | 74d2262688ac0e1293904b030435b1d0fd62e1ea1bcd5a09884d1a15a5e770e9 | 1 | phishing | null | Ling.csv | free stealth 3 . 0 bulk email software . . . | 0 | 0 | ||free stealth 3 . 0 bulk email software . . . | true | sha256 | 0c6efedd3a9f3dada3ddc8b12aa337211043fbc69f80d30c8fedf03195e97510 | ||free stealth 3 . 0 bulk email software . . . | url_norm | false | true | unique_group | |||
85 | b395b7cfc0dc1be1c4f4c4a2ff5921be5143bd8ea4967ac43780998f79f2b920 | 1 | phishing | null | Ling.csv | need more money ? | 0 | 0 | ||need more money ? | true | sha256 | face7d54334572847d525892e00844516b84c5c464753bd38c3fc6a80b418023 | ||need more money ? | url_norm | false | true | unique_group | |||
86 | b7fe83cc33928ede9255fa6cb0c1d1e91eafb951344a44bd19c470d5090f1334 | 1 | phishing | null | Ling.csv | cable decsrambler now only $ 6 . 99 ! | 0 | 0 | ||cable decsrambler now only $ 6 . 99 ! | true | sha256 | 353463e8636eb0373b5aca83b34a46450a16a9ac5bef34bb83ed7979f5a6bbbd | ||cable decsrambler now only $ 6 . 99 ! | url_norm | false | true | unique_group | |||
87 | 6244771019bdf79175bce1c1e966e3151782e41c12257eed8ea117064597ae41 | 0 | legitimate | null | Ling.csv | international sign linguistics association | 0 | 0 | ||international sign linguistics association | true | sha256 | a07ce13435605054ac094e8d3df36d42296c591bdb888d1c8590504b89916765 | ||international sign linguistics association | url_norm | true | true | kept_first_in_group | |||
88 | 4a800d1e5d1f73c40566feb43513dc70c836e718692ba46f7f9bd3e8aabac229 | 0 | legitimate | null | Ling.csv | ceth summer seminar on electronic texts in the humanities | 0 | 0 | ||ceth summer seminar on electronic texts in the humanities | true | sha256 | 73cb9c31f2947919979e710c291b426a7f5275d25c767512f4dd18f79fd73554 | ||ceth summer seminar on electronic texts in the humanities | url_norm | false | true | unique_group | |||
89 | 7f3670d025e03388491ab754fe42ab0c50c27cfabe510c477a154e50a6b96621 | 0 | legitimate | null | Ling.csv | summary : borrowings or replacements of ' ear ' | 0 | 0 | ||summary : borrowings or replacements of ' ear ' | true | sha256 | 4a7930d676917dd5cbc5aea08a0479064309f034c6a12f115446194a3466ef1e | ||summary : borrowings or replacements of ' ear ' | url_norm | false | true | unique_group | |||
90 | 07355c36551d71a461d39531916169522e667576081b3f9ef3719fe48352e048 | 0 | legitimate | null | Ling.csv | summary : german terms for sibilant , shibilant , etc . | 0 | 0 | ||summary : german terms for sibilant , shibilant , etc . | true | sha256 | 0a2c38befaa97c3a76f89c69dc47840e8009fc20afd2d54ab0e97c959ff3e015 | ||summary : german terms for sibilant , shibilant , etc . | url_norm | false | true | unique_group | |||
91 | f85f4463af265894f45466a45f4b705754a132143c1a0153dfd237f085d4a43f | 0 | legitimate | null | Ling.csv | eskimo snow and scottish rain | 0 | 0 | ||eskimo snow and scottish rain | true | sha256 | 1028965c261d1283f12b91c830888fec1ec792f8644a51a011278b2e6213ba70 | ||eskimo snow and scottish rain | url_norm | false | true | unique_group | |||
92 | f213e12eae4e238b6098d79ea92e78fd067efffa8b0b933b67d62476147f0d8e | 1 | phishing | null | Ling.csv | as you requested - - free samples and information | 0 | 0 | ||as you requested - - free samples and information | true | sha256 | 1a0d2b075cd1a33f55e3d56b13a1c2a61342fe1609f1b583b242665b8246a57a | ||as you requested - - free samples and information | url_norm | false | true | unique_group | |||
93 | cb13c1b004672ca32cd91b23e65d2a690eaf01bb1672701cf865b1c0f3db01de | 1 | phishing | null | Ling.csv | the best software @ the best $ | 0 | 0 | ||the best software @ the best $ | true | sha256 | cf602d11b57d6d5a1d08620acf087b8322ffcef45546e9d7254a0dfd121758be | ||the best software @ the best $ | url_norm | false | true | unique_group | |||
94 | d0490eeb7a09736c3db2107a2d8a23d613af9ab3497e42aacd7fcd3764d8d27c | 1 | phishing | null | Ling.csv | hey there interested in some free xxx site 's ? | 0 | 0 | ||hey there interested in some free xxx site 's ? | true | sha256 | 67c1f89dc48544a42851bf5128b3cbaef7e7f7bd732fcce85f05c478ebe0f250 | ||hey there interested in some free xxx site 's ? | url_norm | false | true | unique_group | |||
95 | c4fc98beb5fc033e024470a8d9dfa3d5fd483631ad67ac067484be3c0430a4c9 | 0 | legitimate | null | Ling.csv | job announcement for a spanish sociolinguist at ohio state univ . | 0 | 0 | ||job announcement for a spanish sociolinguist at ohio state univ . | true | sha256 | c5f4dcb4eb38df91a35eccf56c7750b47bfa6f7f1c52d5df3d9dd61545e443c5 | ||job announcement for a spanish sociolinguist at ohio state univ . | url_norm | false | true | unique_group | |||
96 | eb0be3015f82331b7b7df394c758e88b2e4d15a7bc60f07070ffdb7f3b152432 | 0 | legitimate | null | Ling.csv | seeking langacker reference | 0 | 0 | ||seeking langacker reference | true | sha256 | 99bfb0717a4ca9484ea9bb56a99764f9f0b22e8211c58a0c0e2ede6f9f9d008e | ||seeking langacker reference | url_norm | false | true | unique_group | |||
97 | aad3ceb978dc6f7cea0543b1c4bf81ba78c47b7bdb278e20ab49cb298fb1e866 | 0 | legitimate | null | Ling.csv | he / she | 0 | 0 | ||he / she | true | sha256 | 4ef063fd6d9617611b319a01e88cb52093b82a8c1d18154f0e3ade2086e41a64 | ||he / she | url_norm | false | true | unique_group | |||
98 | 81da71952f0990693ce4c51da87563c062ad9a19f476b3e5725193c516c1642c | 0 | legitimate | null | Ling.csv | developments in discourse analysis ( gls 1995 ) | 0 | 0 | ||developments in discourse analysis ( gls 1995 ) | true | sha256 | 7a6868ca5111ba1b6842f6a1c79bee0987982dd9e49aa605750c3ce9cfe03d8b | ||developments in discourse analysis ( gls 1995 ) | url_norm | false | true | unique_group | |||
99 | 02dbea0ab7485b0e4f6b3f0e362c57e23d2a3435d3bb7723ca33c42b0ff05af5 | 0 | legitimate | null | Ling.csv | summary of multimodal refs | 0 | 0 | ||summary of multimodal refs | true | sha256 | 27291a00891f59b539d4c902ecad49d2b861b03626d2b90dedf4307debfe9fbd | ||summary of multimodal refs | url_norm | false | true | unique_group | |||
100 | 8b47bbbca4618e1edfe4d97f9aebfd69ab25d3b5675a533e7832f5274151e033 | 0 | legitimate | null | Ling.csv | sum : progressive with future time reference | 0 | 0 | ||sum : progressive with future time reference | true | sha256 | b27b9edf331cd359d2439670929218ca98500eb5d8fddec01955200654d2b3ad | ||sum : progressive with future time reference | url_norm | false | true | unique_group | |||
101 | 304a1d98e15d7517220d114aa32881abbebf90f51208689af181715ae0601c73 | 0 | legitimate | null | Ling.csv | re : grammar / syntax courses at the college freshman / sophomore level | 0 | 0 | ||re : grammar / syntax courses at the college freshman / sophomore level | true | sha256 | 91b50474af9b2f1321e7be43000f9d8d864d111137d53d6c8c949ae7b0196c01 | ||re : grammar / syntax courses at the college freshman / sophomore level | url_norm | false | true | unique_group |
Phishing Email Curated Cleaned
Phishing Email Curated Cleaned is a cleaned and AI-ready version of the original Phishing Email Curated Datasets by Champa, Rabbi and Zibran (2024), an aggregation of 11 heterogeneous email corpora released on Zenodo for benchmarking phishing email detection with machine learning. The original collection aggregates emails from public corpora spanning 1995–2022 (CEAS-08, Ling-Spam, Enron, Nazario phishing corpus, Nigerian Fraud, SpamAssassin, TREC-05/06/07 plus the extended Nazario_5 and Nigerian_5 splits). The cleaned release preserves the multi-source nature of the data while making it easier to load, more reproducible, and directly usable for supervised classification, NLP-based detection, and cross-source robustness studies.
Compared with the original source asset, this release normalizes the heterogeneous schemas of the 11 source CSVs, applies a label-rescue policy on records with invalid labels, removes duplicate emails, audits constant and non-finite features, and exports a unified labeled dataset in a stable, memory-mapped, ML-ready format. Each sample is represented as a fixed-length numerical vector of 53 features hand-engineered from the raw email text (subject, body, headers, URL signals), while the original textual fields are preserved separately as metadata for audit and traceability.
Original datasets
This cleaned release is derived from multiple phishing and legitimate email datasets:
- Original name: Phishing Email Curated Datasets
- Original provider: Champa, Rabbi & Zibran (Idaho State University) — released on Zenodo
- Original papers: A. I. Champa, M. F. Rabbi, and M. F. Zibran (2024). Why phishing emails escape detection: A closer look at the failure points A. I. Champa, M. F. Rabbi, and M. F. Zibran (2024). Curated datasets and feature analysis for phishing email detection with machine learning.
- Original DOI: https://doi.org/10.5281/zenodo.8339691
- Original project/repository: https://zenodo.org/records/8339691 Please cite the original datasets and related publications when using this cleaned release in research.
Files
| File | Description |
|---|---|
email_clean.npz |
Index file with row/feature counts and file references |
email_clean_X.npy |
Feature matrix (float32), NumPy .npy array, shape (181907, 53) |
email_clean_y.npy |
Label vector (int32), 0 = legitimate, 1 = phishing |
email_clean_metadata.parquet |
Per-sample metadata including source dataset fields and quality flags |
canonical_manifest_final.json |
Versioned manifest with checksums and artifact references |
email_curated_cleaned_dataset.ipynb |
Exploration and usage notebook |
What’s in the dataset?
This cleaned release contains a fully labeled phishing email classification dataset built from multiple curated sources.
Labeled split
- 181,907 labeled samples
- 53 numerical features
- feature dtype:
float32 - label dtype:
int32 - labels:
0= legitimate1= phishing
The dataset combines phishing and legitimate emails originating from multiple heterogeneous corpora.
Feature representation
Samples are represented as fixed-length numerical feature vectors derived from structured email-related characteristics.
The feature space includes information related to:
- email structure
- sender-related properties
- subject-related properties
- URL indicators
- attachment-related characteristics
- textual and statistical indicators
- phishing-related heuristics
The original source datasets may also contain raw email text or additional metadata fields. These are preserved in the metadata parquet file when available but excluded from the numerical ML feature matrix.
Multi-source harmonization
One of the main goals of this cleaned release is the harmonization of heterogeneous phishing email corpora into a unified and reproducible tabular benchmark.
The pipeline standardizes:
- labels
- metadata structure
- feature schema
- source attribution
- duplicate handling
across all original datasets.
Cleaning summary
This release is the output of a quality-control and harmonization pipeline applied to the original phishing email corpora.
Main processing steps:
- Duplicate removal using canonical email identifiers
- Metadata standardization
- Cross-source schema harmonization
- Feature integrity validation
- Missing-value and non-finite auditing
- Manifest generation for reproducibility and integrity checks
Summary of the main changes:
- 35,297 duplicate samples removed
- 0 constant features dropped
- 0 rows removed due to NaN/Inf/non-finite values
- final dataset shape: 181,907 × 53
No label conflicts were found during duplicate analysis.
File structure
Email_Curated_cleaned/
├── email_clean.npz
├── email_clean_X.npy
├── email_clean_y.npy
├── email_clean_metadata.parquet
└── canonical_manifest_final.json
The .npz index stores _rows and _features for reliable loading.
The feature matrix is stored as a NumPy .npy array and can be loaded directly with np.load(...).
Requirements
To run the quickstart examples, install the minimum required dependencies:
pip install numpy pandas pyarrow
For notebook-based exploration and basic visualization, you may also install:
pip install jupyter matplotlib seaborn scikit-learn
Quickstart
This example loads the labeled Phishing Email Curated Cleaned dataset and checks that features, labels, and metadata are consistent and ready for supervised use.
import numpy as np
import pandas as pd
idx = np.load("email_clean.npz", allow_pickle=True)
n_rows = int(idx["_rows"])
n_features = int(idx["_features"])
X = np.load("email_clean_X.npy")
y = np.load("email_clean_y.npy")
meta = pd.read_parquet("email_clean_metadata.parquet")
print(
f"Dataset: {X.shape[0]} samples, {X.shape[1]} features | "
f"labels: {y.shape[0]} | metadata columns: {meta.shape[1]}"
)
assert X.shape == (n_rows, n_features)
assert X.shape[0] == len(y) == len(meta)
assert set(np.unique(y)) == {0, 1}
print("Unique labels:", np.unique(y))
print("Metadata columns:", meta.columns.tolist())
print("All checks passed.")
Notebook
The repository also includes an exploration notebook in .ipynb format, designed to provide additional context on the cleaned dataset, its structure, and its main analytical use cases.
The notebook can be used to:
- inspect the labeled split, its 53 features and its 11-source provenance
- explore feature distributions, sparsity profile and per-class statistics
- validate dataset consistency end-to-end
- review two example use cases: feature importance with Random Forest and full model evaluation (precision/recall, confusion matrix, ROC curve)
To open it locally, run:
jupyter notebook email_curated_cleaned_dataset.ipynb
or, if you use JupyterLab:
jupyter lab email_curated_cleaned_dataset.ipynb
Make sure to open the notebook from the dataset root directory so that relative file paths resolve correctly.
Typical use cases
Phishing Email Curated Cleaned supports:
- binary phishing email detection
- benchmarking of tabular ML pipelines
- feature importance and ablation analysis on lexical, structural and URL-based signals
- cross-source generalisation studies (train on N corpora, test on a held-out source)
- exploratory data analysis on email content and metadata
- failure-point analysis: studying why some phishing emails escape ML detection
The accompanying notebook includes dataset loading, exploratory analysis, and example use cases focused on phishing email classification and feature evaluation.
Notes and limitations
This is a structured phishing email dataset focused on engineered numerical features.
The cleaned release does not distribute raw malicious email attachments or executable payloads.
The dataset is derived from heterogeneous public corpora and may reflect source-specific collection biases.
The dataset is not intended for temporal phishing analysis.
Results obtained on this benchmark should not be over-generalized to all phishing ecosystems without additional validation.
The dataset is intended for defensive research, benchmarking, and education.
License
This cleaned release is derived from the original dataset. The original data files are associated with the CC BY 4.0 License. Please verify that your downstream redistribution and reuse remain aligned with the original source dataset.
References
If you use this dataset, please cite the original Phishing Email Curated dataset release:
@inproceedings{champa2024phishing, title={Why Phishing Emails Escape Detection: A Closer Look at the Failure Points}, author={Champa, Arifa I and Rabbi, Fazle and Zibran, Minhaz F}, booktitle={2024 12th International Symposium on Digital Forensics and Security (ISDFS)}, pages={1--6}, year={2024}, organization={IEEE} }
@inproceedings{champa2024curated, title={Curated Datasets and Feature Analysis for Phishing Email Detection with Machine Learning}, author={Champa, Arifa I and Rabbi, Md Fazle and Zibran, Minhaz F}, booktitle={3rd IEEE International Conference on Computing and Machine Intelligence (ICMI)}, pages = {1--7}, year={2024} }
APA:
Arifa Islam, C. (2023). Phishing Email Curated Datasets [Data set]. Zenodo. https://doi.org/10.5281/zenodo.8339691
Contacts
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