心理学
能力(人力资源)
语言能力
认知科学
语言学
认知
认知心理学
人类语言
神经科学
社会心理学
哲学
作者
Kyle Mahowald,Anna A. Ivanova,Idan Blank,Nancy Kanwisher,Joshua B. Tenenbaum,Evelina Fedorenko
标识
DOI:10.1016/j.tics.2024.01.011
摘要
Large language models (LLMs) have come closest among all models to date to mastering human language, yet opinions about their linguistic and cognitive capabilities remain split. Here, we evaluate LLMs using a distinction between formal linguistic competence (knowledge of linguistic rules and patterns) and functional linguistic competence (understanding and using language in the world). We ground this distinction in human neuroscience, which has shown that formal and functional competence rely on different neural mechanisms. Although LLMs are surprisingly good at formal competence, their performance on functional competence tasks remains spotty and often requires specialized fine-tuning and/or coupling with external modules. We posit that models that use language in human-like ways would need to master both of these competence types, which, in turn, could require the emergence of separate mechanisms specialized for formal versus functional linguistic competence.
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