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What Do NLP Researchers Believe? Results of the NLP Community Metasurvey

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arxiv 2208.12852 v1 pith:CHMHYA6X submitted 2022-08-26 cs.CL cs.AI

What Do NLP Researchers Believe? Results of the NLP Community Metasurvey

classification cs.CL cs.AI
keywords communityresultssurveybeliefbeliefsbiasimportanceinductive
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present the results of the NLP Community Metasurvey. Run from May to June 2022, the survey elicited opinions on controversial issues, including industry influence in the field, concerns about AGI, and ethics. Our results put concrete numbers to several controversies: For example, respondents are split almost exactly in half on questions about the importance of artificial general intelligence, whether language models understand language, and the necessity of linguistic structure and inductive bias for solving NLP problems. In addition, the survey posed meta-questions, asking respondents to predict the distribution of survey responses. This allows us not only to gain insight on the spectrum of beliefs held by NLP researchers, but also to uncover false sociological beliefs where the community's predictions don't match reality. We find such mismatches on a wide range of issues. Among other results, the community greatly overestimates its own belief in the usefulness of benchmarks and the potential for scaling to solve real-world problems, while underestimating its own belief in the importance of linguistic structure, inductive bias, and interdisciplinary science.

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