학술논문

Beyond the Imitation Game: Quantifying and extrapolating the capabilities of language models
Document Type
Working Paper
Author
Srivastava, AarohiRastogi, AbhinavRao, AbhishekShoeb, Abu Awal MdAbid, AbubakarFisch, AdamBrown, Adam R.Santoro, AdamGupta, AdityaGarriga-Alonso, AdriàKluska, AgnieszkaLewkowycz, AitorAgarwal, AkshatPower, AletheaRay, AlexWarstadt, AlexKocurek, Alexander W.Safaya, AliTazarv, AliXiang, AliceParrish, AliciaNie, AllenHussain, AmanAskell, AmandaDsouza, AmandaSlone, AmbroseRahane, AmeetIyer, Anantharaman S.Andreassen, AndersMadotto, AndreaSantilli, AndreaStuhlmüller, AndreasDai, AndrewLa, AndrewLampinen, AndrewZou, AndyJiang, AngelaChen, AngelicaVuong, AnhGupta, AnimeshGottardi, AnnaNorelli, AntonioVenkatesh, AnuGholamidavoodi, ArashTabassum, ArfaMenezes, ArulKirubarajan, ArunMullokandov, AsherSabharwal, AshishHerrick, AustinEfrat, AviaErdem, AykutKarakaş, AylaRoberts, B. RyanLoe, Bao ShengZoph, BarretBojanowski, BartłomiejÖzyurt, BatuhanHedayatnia, BehnamNeyshabur, BehnamInden, BenjaminStein, BennoEkmekci, BerkLin, Bill YuchenHowald, BlakeOrinion, BryanDiao, CameronDour, CameronStinson, CatherineArgueta, CedrickRamírez, César FerriSingh, ChandanRathkopf, CharlesMeng, ChenlinBaral, ChittaWu, ChiyuCallison-Burch, ChrisWaites, ChrisVoigt, ChristianManning, Christopher D.Potts, ChristopherRamirez, CindyRivera, Clara E.Siro, ClemenciaRaffel, ColinAshcraft, CourtneyGarbacea, CristinaSileo, DamienGarrette, DanHendrycks, DanKilman, DanRoth, DanFreeman, DanielKhashabi, DanielLevy, DanielGonzález, Daniel MoseguíPerszyk, DanielleHernandez, DannyChen, DanqiIppolito, DaphneGilboa, DarDohan, DavidDrakard, DavidJurgens, DavidDatta, DebajyotiGanguli, DeepEmelin, DenisKleyko, DenisYuret, DenizChen, DerekTam, DerekHupkes, DieuwkeMisra, DigantaBuzan, DilyarMollo, Dimitri CoelhoYang, DiyiLee, Dong-HoSchrader, DylanShutova, EkaterinaCubuk, Ekin DogusSegal, EladHagerman, EleanorBarnes, ElizabethDonoway, ElizabethPavlick, EllieRodola, EmanueleLam, EmmaChu, EricTang, EricErdem, ErkutChang, ErnieChi, Ethan A.Dyer, EthanJerzak, EthanKim, EthanManyasi, Eunice EngefuZheltonozhskii, EvgeniiXia, FanyueSiar, FatemehMartínez-Plumed, FernandoHappé, FrancescaChollet, FrancoisRong, FriedaMishra, GauravWinata, Genta Indrade Melo, GerardKruszewski, GermánParascandolo, GiambattistaMariani, GiorgioWang, GloriaJaimovitch-López, GonzaloBetz, GregorGur-Ari, GuyGalijasevic, HanaKim, HannahRashkin, HannahHajishirzi, HannanehMehta, HarshBogar, HaydenShevlin, HenrySchütze, HinrichYakura, HiromuZhang, HongmingWong, Hugh MeeNg, IanNoble, IsaacJumelet, JaapGeissinger, JackKernion, JacksonHilton, JacobLee, JaehoonFisac, Jaime FernándezSimon, James B.Koppel, JamesZheng, JamesZou, JamesKocoń, JanThompson, JanaWingfield, JanelleKaplan, JaredRadom, JaremaSohl-Dickstein, JaschaPhang, JasonWei, JasonYosinski, JasonNovikova, JekaterinaBosscher, JelleMarsh, JenniferKim, JeremyTaal, JeroenEngel, JesseAlabi, JesujobaXu, JiachengSong, JiamingTang, JillianWaweru, JoanBurden, JohnMiller, JohnBalis, John U.Batchelder, JonathanBerant, JonathanFrohberg, JörgRozen, JosHernandez-Orallo, JoseBoudeman, JosephGuerr, JosephJones, JosephTenenbaum, Joshua B.Rule, Joshua S.Chua, JoyceKanclerz, KamilLivescu, KarenKrauth, KarlGopalakrishnan, KarthikIgnatyeva, KaterinaMarkert, KatjaDhole, Kaustubh D.Gimpel, KevinOmondi, KevinMathewson, KoryChiafullo, KristenShkaruta, KseniaShridhar, KumarMcDonell, KyleRichardson, KyleReynolds, LariaGao, LeoZhang, LiDugan, LiamQin, LianhuiContreras-Ochando, LidiaMorency, Louis-PhilippeMoschella, LucaLam, LucasNoble, LucySchmidt, LudwigHe, LuhengColón, Luis OliverosMetz, LukeŞenel, Lütfi KeremBosma, MaartenSap, Maartenter Hoeve, MaartjeFarooqi, MaheenFaruqui, ManaalMazeika, MantasBaturan, MarcoMarelli, MarcoMaru, MarcoQuintana, Maria Jose RamírezTolkiehn, MarieGiulianelli, MarioLewis, MarthaPotthast, MartinLeavitt, Matthew L.Hagen, MatthiasSchubert, MátyásBaitemirova, Medina OrdunaArnaud, MelodyMcElrath, MelvinYee, Michael A.Cohen, MichaelGu, MichaelIvanitskiy, MichaelStarritt, MichaelStrube, MichaelSwędrowski, MichałBevilacqua, MicheleYasunaga, MichihiroKale, MihirCain, MikeXu, MimeeSuzgun, MiracWalker, MitchTiwari, MoBansal, MohitAminnaseri, MoinGeva, MorGheini, MozhdehT, Mukund VarmaPeng, NanyunChi, Nathan A.Lee, NayeonKrakover, Neta Gur-AriCameron, NicholasRoberts, NicholasDoiron, NickMartinez, NicoleNangia, NikitaDeckers, NiklasMuennighoff, NiklasKeskar, Nitish ShirishIyer, Niveditha S.Constant, NoahFiedel, NoahWen, NuanZhang, OliverAgha, OmarElbaghdadi, OmarLevy, OmerEvans, OwainCasares, Pablo Antonio MorenoDoshi, ParthFung, PascaleLiang, Paul PuVicol, PaulAlipoormolabashi, PegahLiao, PeiyuanLiang, PercyChang, PeterEckersley, PeterHtut, Phu MonHwang, PinyuMiłkowski, PiotrPatil, PiyushPezeshkpour, PouyaOli, PritiMei, QiaozhuLyu, QingChen, QinlangBanjade, RabinRudolph, Rachel EttaGabriel, RaeferHabacker, RahelRisco, RamonMillière, RaphaëlGarg, RhythmBarnes, RichardSaurous, Rif A.Arakawa, RikuRaymaekers, RobbeFrank, RobertSikand, RohanNovak, RomanSitelew, RomanLeBras, RonanLiu, RosanneJacobs, RowanZhang, RuiSalakhutdinov, RuslanChi, RyanLee, RyanStovall, RyanTeehan, RyanYang, RylanSingh, SahibMohammad, Saif M.Anand, SajantDillavou, SamShleifer, SamWiseman, SamGruetter, SamuelBowman, Samuel R.Schoenholz, Samuel S.Han, SanghyunKwatra, SanjeevRous, Sarah A.Ghazarian, SarikGhosh, SayanCasey, SeanBischoff, SebastianGehrmann, SebastianSchuster, SebastianSadeghi, SepidehHamdan, ShadiZhou, SharonSrivastava, ShashankShi, SherrySingh, ShikharAsaadi, ShimaGu, Shixiang ShanePachchigar, ShubhToshniwal, ShubhamUpadhyay, ShyamShyamolimaDebnathShakeri, SiamakThormeyer, SimonMelzi, SimoneReddy, SivaMakini, Sneha PriscillaLee, Soo-HwanTorene, SpencerHatwar, SriharshaDehaene, StanislasDivic, StefanErmon, StefanoBiderman, StellaLin, StephaniePrasad, StephenPiantadosi, Steven T.Shieber, Stuart M.Misherghi, SummerKiritchenko, SvetlanaMishra, SwaroopLinzen, TalSchuster, TalLi, TaoYu, TaoAli, TariqHashimoto, TatsuWu, Te-LinDesbordes, ThéoRothschild, TheodorePhan, ThomasWang, TianleNkinyili, TiberiusSchick, TimoKornev, TimofeiTunduny, TitusGerstenberg, TobiasChang, TrentonNeeraj, TrishalaKhot, TusharShultz, TylerShaham, UriMisra, VedantDemberg, VeraNyamai, VictoriaRaunak, VikasRamasesh, VinayPrabhu, Vinay UdayPadmakumar, VishakhSrikumar, VivekFedus, WilliamSaunders, WilliamZhang, WilliamVossen, WoutRen, XiangTong, XiaoyuZhao, XinranWu, XinyiShen, XudongYaghoobzadeh, YadollahLakretz, YairSong, YangqiuBahri, YasamanChoi, YejinYang, YichiHao, YidingChen, YifuBelinkov, YonatanHou, YuHou, YufangBai, YuntaoSeid, ZacharyZhao, ZhuoyeWang, ZijianWang, Zijie J.Wang, ZiruiWu, Ziyi
Source
Transactions on Machine Learning Research, May/2022, https://openreview.net/forum?id=uyTL5Bvosj
Subject
Computer Science - Computation and Language
Computer Science - Artificial Intelligence
Computer Science - Computers and Society
Computer Science - Machine Learning
Statistics - Machine Learning
Language
Abstract
Language models demonstrate both quantitative improvement and new qualitative capabilities with increasing scale. Despite their potentially transformative impact, these new capabilities are as yet poorly characterized. In order to inform future research, prepare for disruptive new model capabilities, and ameliorate socially harmful effects, it is vital that we understand the present and near-future capabilities and limitations of language models. To address this challenge, we introduce the Beyond the Imitation Game benchmark (BIG-bench). BIG-bench currently consists of 204 tasks, contributed by 450 authors across 132 institutions. Task topics are diverse, drawing problems from linguistics, childhood development, math, common-sense reasoning, biology, physics, social bias, software development, and beyond. BIG-bench focuses on tasks that are believed to be beyond the capabilities of current language models. We evaluate the behavior of OpenAI's GPT models, Google-internal dense transformer architectures, and Switch-style sparse transformers on BIG-bench, across model sizes spanning millions to hundreds of billions of parameters. In addition, a team of human expert raters performed all tasks in order to provide a strong baseline. Findings include: model performance and calibration both improve with scale, but are poor in absolute terms (and when compared with rater performance); performance is remarkably similar across model classes, though with benefits from sparsity; tasks that improve gradually and predictably commonly involve a large knowledge or memorization component, whereas tasks that exhibit "breakthrough" behavior at a critical scale often involve multiple steps or components, or brittle metrics; social bias typically increases with scale in settings with ambiguous context, but this can be improved with prompting.
Comment: 27 pages, 17 figures + references and appendices, repo: https://github.com/google/BIG-bench