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What BERT Is Not: Lessons from a New Suite of Psycholinguistic Diagnostics for Language Models
Author(s) -
Allyson Ettinger
Publication year - 2020
Publication title -
transactions of the association for computational linguistics
Language(s) - English
Resource type - Journals
ISSN - 2307-387X
DOI - 10.1162/tacl_a_00298
Subject(s) - computer science , suite , context (archaeology) , natural language processing , language model , inference , artificial intelligence , negation , noun , event (particle physics) , language understanding , linguistics , programming language , history , philosophy , physics , archaeology , quantum mechanics
Pre-training by language modeling has become a popular and successful approach to NLP tasks, but we have yet to understand exactly what linguistic capacities these pre-training processes confer upon models. In this paper we introduce a suite of diagnostics drawn from human language experiments, which allow us to ask targeted questions about the information used by language models for generating predictions in context. As a case study, we apply these diagnostics to the popular BERT model, finding that it can generally distinguish good from bad completions involving shared category or role reversal, albeit with less sensitivity than humans, and it robustly retrieves noun hypernyms, but it struggles with challenging inferences and role-based event prediction -- and in particular, it shows clear insensitivity to the contextual impacts of negation.

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