心理学
认知心理学
人工智能
自然语言处理
认知
语言学
语言习得
语言模型
认知科学
语义学(计算机科学)
统计学习
感知
自然语言
计算模型
沟通
作者
A Rego,Alline Nogueira Melo,Joshua Snell,Martijn Meeter
出处
期刊:Cognition
[Elsevier BV]
日期:2026-04-02
卷期号:273: 106535-106535
标识
DOI:10.1016/j.cognition.2026.106535
摘要
During reading, what makes us regress - i.e., go back in a text instead of going forward? One prevailing view is that regressions reflect comprehension processes, that is, readers selectively regress to retrieve relevant information from text. Here we investigate whether surprisal and saliency derived from large language models can predict the initiation and destination of regressions. Surprisal is a measure of how (un)expected a word is given its context and may be interpreted to reflect the difficulty of integrating the fixated word into the mental representation built from the previously read context. Saliency is a measure of how relevant a word is to the correct prediction of an upcoming word (in this case, the regression origin). Across two English corpora of eye movements and two monolingual large language models, we found that less surprising words were more likely to trigger a regression, while more salient and more surprising words were more likely to be the target of a regression. Our results suggest that readers tend to regress when cognitive load is lower to reactivate linguistic input associated with the regression origin, in favor of the reactivation hypothesis of regressions in reading.
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