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850,490,912,954,351,600 | Alex Brosas another idiot #ALDUBKSGoesToUS https://t.co/14G7hFwVQm | abusive |
848,791,766,853,668,900 | RT @ItIzBiz: as Nancy Reagan would say, 'just say FUCKING NO!"
or something like that... https://t.co/ZaxB2gCq5v | abusive |
850,010,509,969,465,300 | RT @MailOnline: The Nazi death gas so horrific even Hitler feared using it https://t.co/pO2FiPVcnc | normal |
848,619,867,506,913,300 | RT @chevleia: don't hmu when u get tired of ur boring hoe ur boring now too | abusive |
850,449,456,445,235,200 | RT @Auria__: Can't even feel bad for females who are stuck on a nigga that disrespects them . You gon learn sis | hateful |
847,945,888,995,708,900 | RT @electricpunany: i HATE how some of u ignore the fact that ur nigga cheated bc he WANTED to. not bc some girl didn't care that he had a… | hateful |
849,282,894,682,050,600 | But he still with the shits so he started smoking and drinking (bad combo) probably looking like ... https://t.co/GWLVBxkGgh | abusive |
848,491,429,517,295,600 | RT @Configa: April Fools fucking #dope If you ain't feeling this than you have rigor mortis, dummy!! #hiphop #boombap #goldenera… https://t… | abusive |
847,804,507,367,100,400 | Niggas keep talking about women wearing weave but be sick when a bitch up a fro on they ass. 😭 | hateful |
849,562,231,129,993,200 | "God, you're fucking pathetic." https://t.co/ugvCc03GzC | abusive |
850,344,984,742,174,700 | Carlos Correa had gyalchester as his walkup music and it was so bad ass 😂 | normal |
848,668,638,869,672,000 | Damn dean just put Corbin to sleep. That Match Also Showed why It Was On Pre show. Boring as fuck | abusive |
850,660,404,770,590,700 | "THE FORCE AWAKENS: A Bad Lip Reading" (Featuring Mark Hamill as Han Solo) https://t.co/hWWWMPP03c | normal |
848,638,037,231,906,800 | I hate a ol I forgot my Wallet at home but I have my ID ass bitch!!! | abusive |
848,610,228,967,010,300 | RT @dawseyslinstead: i just want to cry so fucking bad look at them https://t.co/FaxDU5fI3m | abusive |
849,636,831,033,532,400 | RT @AndyRichter: Jesus, the Get Out sequel looks fucking terrifying https://t.co/cJRwj2QjzP | abusive |
848,866,727,429,455,900 | RT @antoniodelotero: 2. i'm a bad bitch you can't kill me https://t.co/mI0xmuNbfM | abusive |
848,926,030,723,031,000 | RT @HeeeyMonica: Papaya has to be the worst fruit ever | normal |
849,429,355,583,426,600 | Oh my god my dad is so fucking annoying oh my FUCKKKK | abusive |
850,311,262,504,407,000 | RT @mackym1996: He is a fucking idiot. I swear https://t.co/Cy9cNUNBlZ | abusive |
848,455,845,021,196,300 | This is one ass extended April fools I pray someone just says it's a bad joke | abusive |
848,975,292,794,318,800 | @Pineaqples @DenialEsports btw I watched where you watched my pov on stream and boii do I feel retarded | normal |
848,975,292,794,318,800 | @Pineaqples @DenialEsports btw I watched where you watched my pov on stream and boii do I feel retarded | normal |
849,054,770,694,434,800 | RT @Kimberley1222: Disgusting. Insulting. Parks are NOT a charity. Give them a fucking budget, asshole. @realDonaldTrump
#TheResistance
#… | abusive |
847,876,720,719,913,000 | RT @ItsMeGrizz: Bad bitches don't take days off https://t.co/eazGi8KnNh | abusive |
850,346,419,164,553,200 | @NikkisBubble Every bird turd is talking "Children of God" or Our bros. & Sisters" to push evil policy
Russia got full cooperation2rid Syria of Chem Weaps | normal |
850,346,419,164,553,200 | @NikkisBubble Every bird turd is talking "Children of God" or Our bros. & Sisters" to push evil policy
Russia got full cooperation2rid Syria of Chem Weaps | normal |
847,803,697,857,953,800 | RT @gogglepossum: Don't you hate people that put salt on their bag of dicks before even trying them? | abusive |
848,960,621,127,270,400 | Niggas don't lie, our ugly friend put up a pic we just gon write "nigga u ugly" under it | abusive |
849,337,999,431,274,500 | Don't sleep with me? Then don't speak with me. And never talk bad bout niggas that eat with me | abusive |
848,901,053,634,547,700 | Grassley is a damn liar & saying everything for the stupid #MAGA Supporters. Repubs #gaslight all gullible #Trumpeters #StopGorsuch #resist https://t.co/dctkzO0LxJ | abusive |
848,999,561,066,664,000 | unfollowing "bad bitches" on IG just to follow some jiggy ass Asians | abusive |
850,380,636,300,820,500 | RT @mattmfm: I'm really fucking sick of watching the Republican Party be rewarded for flagrantly degrading our democracy. | hateful |
848,652,738,267,406,300 | Systems that don't allow you to change your email address... what the hell are you doing? Were you built by idiots? | hateful |
849,797,741,312,180,200 | Holy crap!! The biggest assclown of a mayor on @TuckerCarlson pulling race card!! Get his ass outta office!!! #draintheswamp | abusive |
849,797,741,312,180,200 | Holy crap!! The biggest assclown of a mayor on @TuckerCarlson pulling race card!! Get his ass outta office!!! #draintheswamp | abusive |
850,720,957,941,547,000 | I repeat... What the bloody hell is happening! 🙈👀 https://t.co/nWQlRJRIV3 | abusive |
849,107,027,527,745,500 | RT @EiramAydni: Im a nasty ass freak when I like you.. | abusive |
847,652,946,217,009,200 | @JayFoee_ just another dumbass bronco fan swear I hate this fanbase dawg 😭 | hateful |
849,464,319,288,987,600 | RT @AndyRichter: Jesus, the Get Out sequel looks fucking terrifying https://t.co/cJRwj2QjzP | abusive |
847,434,833,995,350,000 | RT @chanbaekhurrah: in case u guys had a painful day like mine, here's chanyeol asking to hold baekhyun's hand bcs why the hell not 😄💕💕 htt… | abusive |
847,535,899,974,004,700 | RT @genn_up: "Opened 5 min ago" is SO fuckin annoying. A dinny send messages for the ged of ma health a send them for a fuckin REPLY | abusive |
848,338,236,770,582,500 | Dick Tracy Meets Gruesome - the 2017 re-boot
#Riffotronic https://t.co/IMkbJxjysV | normal |
848,337,741,813,358,600 | fucks sake go away stupid anon — ^ https://t.co/8TQGyiKCVE | abusive |
850,131,301,713,793,000 | can someone sum this up before i call this guy retarded https://t.co/yuQVEUcvia | abusive |
848,601,639,057,576,000 | RT @BluntOfLoud: Reason Why These Bitches Secretly Hate Me🤣🤣🤣🤣🤣 https://t.co/ixJD7B4ZDz | abusive |
847,542,736,651,767,800 | what idiot called them antacids and not afterburners | abusive |
849,763,234,743,808,000 | Here's a not so unpopular opinion @MMFlint is a fucking moron | hateful |
848,208,045,553,438,700 | im sick too 😒 sick of these hoes 🤦🏾♀️ https://t.co/43W9Iwkioj | abusive |
848,773,425,136,934,900 | Yooooo vans got these sick ass velvet oxblood slip onnnnssssss 💦💦💦💦👅👅👅👅 | abusive |
849,203,190,314,684,400 | @TheRealCamerota THAT BEER BUYING FREAKING IDIOT THINKS TRUMP LEAKED IT TO NAIL RICE? ARE YOU KIDDING? AND SACRIFICE FLYNN. MUD IS APPROPO | abusive |
848,993,277,986,701,300 | RT @RileyNixon_: bout to get butt fucked !!! https://t.co/5ho3r7keZh | abusive |
848,554,797,049,421,800 | @roaringsoftly i will go to bat for you!!! what the hell is wrong with people!! also ily | abusive |
848,835,698,006,401,000 | RT @THESLUMPGOD: I Sampled Jaws
Pull Up With The Pistol Make A Nigga Look So Dam Sick Like He Seen A Bitch With 3 Titts https://t.co/64YC… | hateful |
849,013,733,623,976,000 | You know what happens to people that trust a pathological liar? They get fucked over! Repeatedly! https://t.co/eSPcGAYeSx | abusive |
849,013,733,623,976,000 | You know what happens to people that trust a pathological liar? They get fucked over! Repeatedly! https://t.co/eSPcGAYeSx | abusive |
850,545,619,274,014,700 | RT @Sixteen_digits: Police holds me. Anoda police ask "officer weytin him do" he replies D idiot pis for here. D oda says hold d idiot mak… | abusive |
849,367,976,138,727,400 | ,😂 LMFAOOOOOOOOOOOOOOOO pathetic ass bitches https://t.co/9GM8SRY4vl | abusive |
850,356,342,900,445,200 | Lmfao must suck being from Hemet and never seeing a real bad bitch walk in ya city unless it's on the internet 🤣🤣🤣🤣 https://t.co/UiyQFJHLz9 | abusive |
850,356,342,900,445,200 | Lmfao must suck being from Hemet and never seeing a real bad bitch walk in ya city unless it's on the internet 🤣🤣🤣🤣 https://t.co/UiyQFJHLz9 | abusive |
850,451,327,129,985,000 | @audzwack There's a tumblr post about how fucking bad the production was on the show and it made me cry laughing I have to find it | abusive |
849,902,645,024,137,200 | RT @laadie_d: i hate bitches that don't know how to mind they business | abusive |
850,215,875,680,522,200 | RT @arianam0lina: if you litter you're a bitch & i hate you | hateful |
848,989,217,921,409,000 | 💀 yk them hoes ugly sis. 🤦🏽♀️ https://t.co/OA9aQ6LN7G | abusive |
849,922,895,132,459,000 | RT @cybeque: Don't take out the anger of being a hairless nigga on us. .. https://t.co/7UeObG5182 | hateful |
847,663,964,657,860,600 | Bloody splicers sealed Johnny in before they... goddamn splicers! | hateful |
849,327,505,312,026,600 | We miss yo ugly sid the the Sloth , dur yes dur saying ass too https://t.co/v6sTVEhH2n | abusive |
849,711,858,751,868,900 | Hopefully all fathers and mothers tell they daughghters ben dover and his friends are evil cunts | abusive |
847,760,077,108,822,000 | Up at 2am, still sick, dr. Pissing me off, ugh it's almost spring break, I just wanna be well!😢whine,sniffle,cough,cry!😠 | normal |
848,749,681,211,568,100 | sis....i'm fuckin sick. i'm done with it, it's 11 now https://t.co/Ed4Bowmlro | abusive |
849,427,879,196,848,100 | RT @JDfromNY206: I DONT KNOW WHAT TO SAY!!!! I HAVE FUCKING GOOSEBUMPS!!!! #SDLive #SDLiveAfterMania | abusive |
848,573,151,328,043,000 | Something is deeply wrong with him! That and the LYING! Scare the hell out of me.. https://t.co/Q7ucdx4eEH | normal |
848,573,151,328,043,000 | Something is deeply wrong with him! That and the LYING! Scare the hell out of me.. https://t.co/Q7ucdx4eEH | normal |
850,084,090,623,787,000 | RT @fawfulfan: Go fuck yourself, @SenJohnMcCain. You can't whine about the dreadful consequences of something AS YOU VOTE FOR IT. #NuclearO… | abusive |
848,110,494,422,630,400 | RT @kindslut: if you hate Kim Kardashian i'll just assume you're a hating ass bitch | hateful |
849,115,860,715,413,500 | RT @Duhhitsswinkelz: I walk around my school untouchable & all the bitches that don't like me just sit around and hate 😆💁🏽 | abusive |
849,517,133,969,199,100 | RT @THRASHKETCHUM: Anyone walking slower than me is a fuckin idiot. Anyone waking faster than me is also a fuckin idiot. Just walk fuckin g… | abusive |
848,741,150,005,571,600 | @AMCTalkingDead Sad to see Sasha gone, But she went out her way! To bad she didn't get to bite the ass hole Negan!! | abusive |
849,570,103,842,689,000 | Court and Duncan are fucking miserable tonight #MKR | abusive |
850,833,365,293,031,400 | RT @shaterly_xo: And idiots spend $8.99 for a bag of skittles. https://t.co/vLLaoj61jF | abusive |
850,585,096,067,350,500 | RT @gzusscripes1: The trump crime family is taking over our country and I'm really fucking sick of it. https://t.co/FgGBpB6lpw | abusive |
848,681,938,986,651,600 | MY FUCKING GOD @shanemcmahon DON'T DIE!! Backflips like a cruiserweight in his prime at 47!! 😳😳 #Wrestlemania | abusive |
849,623,568,619,057,200 | THIS yes what IS wrong with u people omg nasty as hell https://t.co/k39rfX4uNw | hateful |
850,163,392,337,764,400 | RT @AlphaOmegaSin: Someone told me they didn't like owls...how fucking dare your face ever make sounds into words that are so terrible
You… | abusive |
848,039,367,448,940,500 | RT @chilledpan: THAT'S WHAT U FUCKING GET FOR PUSHING THAT DOG!!!!!!!!! https://t.co/4qxS1zEnrm | abusive |
850,015,966,750,806,000 | Theres a difference between marketing and being fucking annoying | abusive |
849,173,893,122,281,500 | RT @peace_moin: & some idiots of my country think and this regime is working to bring UNIFORM CIVIL CODE.
Let them bring UNIFORM BEEF CONSU… | abusive |
848,594,131,257,577,500 | He would not have won if the DNC knew what the hell they were doing. It's too bad if saying that hurts feelings, but Trump's gotta go | hateful |
848,594,131,257,577,500 | He would not have won if the DNC knew what the hell they were doing. It's too bad if saying that hurts feelings, but Trump's gotta go | normal |
848,129,633,061,134,300 | RT @silvermaknaetae: "Namjoon is ugly."
Bitch where??? https://t.co/kCo32O0OiU | abusive |
848,898,276,984,311,800 | @lelappi all they care about on twitter/tumblr is fucking SHIPPING and they hate everyone that doesnt ship their ooc pairings | abusive |
849,751,289,399,566,300 | RT @GunnerStaal: "You see we should have traded Letang, he's always hurt"
- Idiots | hateful |
849,059,623,504,052,200 | RT @JustCallHerKii: WTF !!! #LHHATL just got juicy OMG she fuckin with her boss husband 😶😶😶 | abusive |
850,509,426,616,221,700 | im so emo abt nu'est i fuckin hate pledis for doing this to them https://t.co/56aTs59vcY | abusive |
849,797,502,211,563,500 | Even though we all know how fake Tom and LuAnn are, it’s really sickening seeing Ramona so hell bent on ruining it. #RHONY | normal |
847,811,708,995,481,600 | I hate when people get up here and tell what happening on a TV show or Movie... Shut yo ass up 😂 | hateful |
850,741,375,817,601,000 | @politico What's happening in Syria is disgusting, but @realDonaldTrump never gave 2 shits about the issue until now--STAY WOKE PEOPLE! #TRUMPRUSSIA https://t.co/v8XZmii16I | abusive |
849,141,328,512,335,900 | @claireginther but let's talk about that sick ass table | abusive |
849,760,592,332,116,000 | RT @syeoga: Hella is from the bay....and majority of LA bitches hate on the word hella 😂😩 https://t.co/9vmoO3Lnb7 | abusive |
849,771,698,870,255,600 | Oh, yes he is a bad guy.
It's so damn sickening https://t.co/2ZrFqgBrz5 | abusive |
End of preview. Expand
in Dataset Viewer.
SocialMediaIE - Social Media Information Extraction
List of datasets used for training SocialMediaIE
Table of contents generated with markdown-toc
Dataset referencs
Tagging datasets
- POS tagging: [17,18] (OW), [7] (TIE), [20] (RT), 15, [22] (DS), [12] (FS), and [12,13] (LW).
- NER: [20] (RT), [23] (W16), [6] (W17), [9] (FN), [10] (HG),and [4] (BR), [24] (MM), [11] (YD), [21] (we do not evaluate on this) and [1] (MSM).
- Chunking: [20] (RT) dataset.
- Supersense tagging: [20] (RT) dataset, the [14] (JH) dataset.
Dataset statistics
Sentiment
tokens | tweets | vocab | ||
---|---|---|---|---|
data | split | |||
Airline | dev | 20079 | 981 | 3273 |
test | 50777 | 2452 | 5630 | |
train | 182040 | 8825 | 11697 | |
Clarin | dev | 80672 | 4934 | 15387 |
test | 205126 | 12334 | 31373 | |
train | 732743 | 44399 | 84279 | |
GOP | dev | 16339 | 803 | 3610 |
test | 41226 | 2006 | 6541 | |
train | 148358 | 7221 | 14342 | |
Healthcare | dev | 15797 | 724 | 3304 |
test | 16022 | 717 | 3471 | |
train | 14923 | 690 | 3511 | |
Obama | dev | 3472 | 209 | 1118 |
test | 8816 | 522 | 2043 | |
train | 31074 | 1877 | 4349 | |
SemEval | dev | 105108 | 4583 | 14468 |
test | 528234 | 23103 | 43812 | |
train | 281468 | 12245 | 29673 |
Abusive
tokens | tweets | vocab | ||
---|---|---|---|---|
data | split | |||
Founta | dev | 102534 | 4663 | 22529 |
test | 256569 | 11657 | 44540 | |
train | 922028 | 41961 | 118349 | |
WaseemSRW | dev | 25588 | 1464 | 5907 |
test | 64893 | 3659 | 10646 | |
train | 234550 | 13172 | 23042 |
Uncertainity
tokens | tweets | vocab | ||
---|---|---|---|---|
data | split | |||
Riloff | dev | 2126 | 145 | 1002 |
test | 5576 | 362 | 1986 | |
train | 19652 | 1301 | 5090 | |
Swamy | dev | 1597 | 73 | 738 |
test | 3909 | 183 | 1259 | |
train | 14026 | 655 | 2921 |
Part of Speech Tagging
labels | labels_unique | sequences | tokens_unique | total_tokens | ||
---|---|---|---|---|---|---|
data_key | split_prefix | |||||
Owoputi | train | [!, #, $, &, ,, @, A, D, E, G, L, M, N, O, P, R, S, T, U, V, X, Y, Z, ^, ~] | 25 | 1547 | 6572 | 22326 |
dev | [!, #, $, &, ,, @, A, D, E, G, L, N, O, P, R, S, T, U, V, X, Z, ^, ~] | 23 | 327 | 2036 | 4823 | |
test | [!, #, $, &, ,, @, A, D, E, G, L, N, O, P, R, S, T, U, V, X, Z, ^, ~] | 23 | 500 | 2754 | 7152 | |
Foster | test | [ADJ, ADP, ADV, CCONJ, DET, NOUN, NUM, PART, PRON, PUNCT, VERB, X] | 12 | 250 | 1068 | 2841 |
TwitIE | dev | ['', (, ), ,, :, CC, CD, DT, FW, HT, IN, JJ, JJR, JJS, MD, NN, NNP, NNPS, NNS, PDT, POS, PRP, PRP$, PUNCT, RB, RBR, RBS, RP, RT, SYM, TO, UH, URL, USR, VB, VBD, VBG, VBN, VBP, VBZ, WDT, WP, WRB] | 43 | 269 | 1229 | 2998 |
test | ['', (, ), ,, :, CC, CD, DT, EX, FW, HT, IN, JJ, JJR, JJS, MD, NN, NNP, NNPS, NNS, PDT, POS, PRP, PRP#, PUNCT, RB, RBR, RBS, RP, RT, SYM, TO, UH, URL, USR, VB, VBD, VBG, VBN, VBP, VBZ, WDT, WP, WRB] | 45 | 632 | 3539 | 12196 | |
Ritter | dev | ['', (, ), ,, :, CC, CD, DT, HT, IN, JJ, JJR, JJS, MD, NN, NNP, NNS, POS, PRP, PRP$, PUNCT, RB, RBR, RP, RT, TO, UH, URL, USR, VB, VBD, VBG, VBN, VBP, VBZ, WDT, WP, WRB] | 38 | 71 | 695 | 1362 |
test | ['', (, ), ,, :, CC, CD, DT, EX, HT, IN, JJ, JJR, JJS, MD, NN, NNP, NNPS, NNS, PDT, POS, PRP, PRP$, PUNCT, RB, RBR, RP, RT, SYM, TO, UH, URL, USR, VB, VBD, VBG, VBN, VBP, VBZ, WDT, WRB] | 41 | 84 | 735 | 1627 | |
lowlands | dev | [ADJ, ADP, ADV, AUX, CCONJ, DET, INTJ, NOUN, NUM, PART, PRON, PROPN, PUNCT, SCONJ, SYM, VERB, X] | 17 | 710 | 3271 | 11759 |
test | [ADJ, ADP, ADV, CCONJ, DET, NOUN, NUM, PART, PRON, PUNCT, VERB, X] | 12 | 1318 | 4805 | 19794 | |
Tweetbankv2 | dev | [ADJ, ADP, ADV, AUX, CCONJ, DET, INTJ, NOUN, NUM, PART, PRON, PROPN, PUNCT, SCONJ, SYM, VERB, X] | 17 | 710 | 3271 | 11759 |
train | [ADJ, ADP, ADV, AUX, CCONJ, DET, INTJ, NOUN, NUM, PART, PRON, PROPN, PUNCT, SCONJ, SYM, VERB, X] | 17 | 1639 | 5632 | 24753 | |
test | [ADJ, ADP, ADV, AUX, CCONJ, DET, INTJ, NOUN, NUM, PART, PRON, PROPN, PUNCT, SCONJ, SYM, VERB, X] | 17 | 1201 | 4699 | 19095 | |
DiMSUM2016 | train | [ADJ, ADP, ADV, AUX, CCONJ, DET, INTJ, NOUN, NUM, PART, PRON, PROPN, PUNCT, SCONJ, SYM, VERB, X] | 17 | 4799 | 9113 | 73826 |
test | [ADJ, ADP, ADV, AUX, CCONJ, DET, INTJ, NOUN, NUM, PART, PRON, PROPN, PUNCT, SCONJ, SYM, VERB, X] | 17 | 1000 | 4010 | 16500 |
Named Entity Recognition
boundaries | labels | labels_unique | sequences | tokens_unique | total_tokens | ||
---|---|---|---|---|---|---|---|
data_key | split_prefix | ||||||
Finin | train | [I, B, O] | [LOC, PER, ORG] | 3 | 10000 | 19663 | 172188 |
test | [I, B, O] | [LOC, PER, ORG] | 3 | 5369 | 13027 | 97525 | |
Hege | test | [I, B, O] | [LOC, PER, ORG] | 3 | 1545 | 4552 | 20664 |
Ritter | train | [I, B, O] | [COMPANY, OTHER, FACILITY, PERSON, MOVIE, MUSICARTIST, GEO-LOC, TVSHOW, PRODUCT, SPORTSTEAM] | 10 | 1900 | 7695 | 36936 |
dev | [I, B, O] | [COMPANY, OTHER, PERSON, FACILITY, MOVIE, MUSICARTIST, GEO-LOC, TVSHOW, PRODUCT, SPORTSTEAM] | 10 | 240 | 1731 | 4612 | |
test | [I, B, O] | [COMPANY, OTHER, PERSON, FACILITY, MOVIE, MUSICARTIST, GEO-LOC, TVSHOW, PRODUCT, SPORTSTEAM] | 10 | 254 | 1776 | 4921 | |
YODIE | train | [I, B, O] | [COMPANY, OTHER, PERSON, LOCATION, FACILITY, MOVIE, MUSICARTIST, GEO-LOC, UNK, TVSHOW, PRODUCT, SPORTSTEAM, ORGANIZATION] | 13 | 396 | 2554 | 7905 |
test | [I, B, O] | [COMPANY, OTHER, FACILITY, LOCATION, PERSON, MOVIE, MUSICARTIST, GEO-LOC, UNK, TVSHOW, PRODUCT, SPORTSTEAM, ORGANIZATION] | 13 | 397 | 2578 | 8032 | |
WNUT2016 | train | [I, B, O] | [COMPANY, OTHER, FACILITY, PERSON, MOVIE, MUSICARTIST, GEO-LOC, TVSHOW, PRODUCT, SPORTSTEAM] | 10 | 2394 | 9068 | 46469 |
test | [I, B, O] | [COMPANY, OTHER, PERSON, FACILITY, MOVIE, MUSICARTIST, GEO-LOC, TVSHOW, PRODUCT, SPORTSTEAM] | 10 | 3850 | 16012 | 61908 | |
dev | [I, B, O] | [COMPANY, OTHER, FACILITY, PERSON, MOVIE, MUSICARTIST, GEO-LOC, TVSHOW, PRODUCT, SPORTSTEAM] | 10 | 1000 | 5563 | 16261 | |
WNUT2017 | train | [I, B, O] | [GROUP, CORPORATION, PERSON, LOCATION, PRODUCT, CREATIVE-WORK] | 6 | 3394 | 12840 | 62730 |
dev | [I, B, O] | [GROUP, CORPORATION, PERSON, LOCATION, PRODUCT, CREATIVE-WORK] | 6 | 1009 | 3538 | 15733 | |
test | [I, B, O] | [GROUP, CORPORATION, PERSON, LOCATION, PRODUCT, CREATIVE-WORK] | 6 | 1287 | 5759 | 23394 | |
MSM2013 | train | [I, B, O] | [LOC, MISC, PER, ORG] | 4 | 2815 | 8514 | 51521 |
test | [I, B, O] | [LOC, PER, ORG, MISC] | 4 | 1450 | 5701 | 29089 | |
NEEL2016 | train | [I, B, O] | [PERSON, THING, LOCATION, EVENT, PRODUCT, ORGANIZATION, CHARACTER] | 7 | 2588 | 9731 | 51669 |
dev | [I, B, O] | [PERSON, LOCATION, THING, EVENT, PRODUCT, ORGANIZATION, CHARACTER] | 7 | 88 | 762 | 1647 | |
test | [I, B, O] | [PERSON, THING, LOCATION, EVENT, PRODUCT, ORGANIZATION, CHARACTER] | 7 | 2663 | 9894 | 47488 | |
BROAD | train | [I, B, O] | [LOC, PER, ORG] | 3 | 5605 | 19523 | 90060 |
dev | [I, B, O] | [LOC, PER, ORG] | 3 | 933 | 5312 | 15169 | |
test | [I, B, O] | [LOC, PER, ORG] | 3 | 2802 | 11772 | 45159 | |
MultiModal | train | [I, B, O] | [LOC, PER, ORG, MISC] | 4 | 4000 | 20221 | 64439 |
dev | [I, B, O] | [LOC, MISC, PER, ORG] | 4 | 1000 | 6832 | 16178 | |
test | [I, B, O] | [LOC, PER, ORG, MISC] | 4 | 3257 | 17381 | 52822 |
Chunking
boundaries | labels | labels_unique | sequences | tokens_unique | total_tokens | ||
---|---|---|---|---|---|---|---|
data_key | split_prefix | ||||||
Ritter | train | [I, B, O] | [ADJP, PP, INTJ, ADVP, PRT, NP, SBAR, VP, CONJP] | 9 | 551 | 3158 | 10584 |
dev | [I, B, O] | [ADJP, PP, INTJ, ADVP, PRT, NP, SBAR, VP] | 8 | 118 | 994 | 2317 | |
test | [I, B, O] | [ADJP, PP, INTJ, ADVP, PRT, NP, SBAR, VP] | 8 | 119 | 988 | 2310 |
Supersense Tagging
boundaries | labels | labels_unique | sequences | tokens_unique | total_tokens | ||
---|---|---|---|---|---|---|---|
data_key | split_prefix | ||||||
Ritter | train | [I, B, O] | [NOUN.BODY, NOUN.STATE, NOUN.ARTIFACT, NOUN.ATTRIBUTE, NOUN.FOOD, NOUN.TOPS, NOUN.COGNITION, NOUN.EVENT, NOUN.OBJECT, NOUN.MOTIVE, NOUN.GROUP, VERB.COMMUNICATION, NOUN.PHENOMENON, VERB.POSSESSION, VERB.COMPETITION, NOUN.POSSESSION, NOUN.FEELING, VERB.SOCIAL, NOUN.ANIMAL, VERB.CREATION, VERB.CONSUMPTION, VERB.PERCEPTION, VERB.CONTACT, VERB.WEATHER, VERB.BODY, NOUN.LOCATION, NOUN.QUANTITY, NOUN.SUBSTANCE, NOUN.RELATION, NOUN.TIME, NOUN.PERSON, VERB.COGNITION, VERB.EMOTION, NOUN.PLANT, VERB.STATIVE, VERB.MOTION, NOUN.COMMUNICATION, NOUN.PROCESS, NOUN.ACT, VERB.CHANGE] | 40 | 551 | 3174 | 10652 |
dev | [I, B, O] | [NOUN.BODY, NOUN.STATE, NOUN.ARTIFACT, NOUN.ATTRIBUTE, NOUN.FOOD, NOUN.COGNITION, NOUN.EVENT, NOUN.OBJECT, NOUN.MOTIVE, NOUN.GROUP, VERB.COMMUNICATION, NOUN.PHENOMENON, VERB.COMPETITION, VERB.POSSESSION, NOUN.POSSESSION, NOUN.FEELING, VERB.SOCIAL, NOUN.ANIMAL, VERB.CREATION, VERB.CONSUMPTION, VERB.PERCEPTION, VERB.CONTACT, VERB.BODY, NOUN.LOCATION, NOUN.QUANTITY, NOUN.SUBSTANCE, NOUN.RELATION, NOUN.TIME, VERB.COGNITION, NOUN.PERSON, VERB.EMOTION, NOUN.PLANT, VERB.STATIVE, VERB.MOTION, NOUN.COMMUNICATION, NOUN.ACT, VERB.CHANGE] | 37 | 118 | 1014 | 2242 | |
test | [I, B, O] | [NOUN.BODY, NOUN.STATE, NOUN.ARTIFACT, NOUN.ATTRIBUTE, NOUN.FOOD, NOUN.TOPS, NOUN.COGNITION, NOUN.EVENT, NOUN.OBJECT, NOUN.MOTIVE, NOUN.SHAPE, NOUN.GROUP, VERB.COMMUNICATION, NOUN.PHENOMENON, VERB.POSSESSION, NOUN.FEELING, NOUN.POSSESSION, VERB.COMPETITION, VERB.SOCIAL, NOUN.ANIMAL, VERB.CREATION, VERB.CONSUMPTION, VERB.PERCEPTION, VERB.CONTACT, VERB.WEATHER, VERB.BODY, NOUN.LOCATION, NOUN.QUANTITY, NOUN.SUBSTANCE, NOUN.RELATION, NOUN.TIME, NOUN.PERSON, VERB.COGNITION, VERB.EMOTION, VERB.STATIVE, VERB.MOTION, NOUN.COMMUNICATION, NOUN.PROCESS, NOUN.ACT, VERB.CHANGE] | 40 | 118 | 1011 | 2291 | |
Johannsen2014 | test | [I, B, O] | [NOUN.BODY, NOUN.STATE, NOUN.ARTIFACT, NOUN.ATTRIBUTE, NOUN.FOOD, NOUN.COGNITION, NOUN.EVENT, NOUN.OBJECT, NOUN.SHAPE, NOUN.GROUP, VERB.COMMUNICATION, NOUN.PHENOMENON, VERB.COMPETITION, VERB.POSSESSION, NOUN.FEELING, NOUN.POSSESSION, VERB.SOCIAL, NOUN.ANIMAL, VERB.CREATION, VERB.CONSUMPTION, VERB.PERCEPTION, VERB.CONTACT, VERB.BODY, NOUN.LOCATION, NOUN.QUANTITY, NOUN.SUBSTANCE, NOUN.RELATION, NOUN.TIME, NOUN.PERSON, VERB.COGNITION, VERB.EMOTION, VERB.STATIVE, VERB.MOTION, NOUN.COMMUNICATION, NOUN.PROCESS, NOUN.ACT, VERB.CHANGE] | 37 | 200 | 1249 | 3064 |
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