Syntactic structure guides selective maintenance of predicted heads and incomplete dependencies during Japanese sentence comprehension, producing independent reading-time effects and a predictability tradeoff not observed in English.
Yuki Kamide and Don Mitchell
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abstract
Real-time sentence comprehension imposes a significant load on working memory, as comprehenders must maintain contextual information to anticipate future input. While measures of such load have played an important role in psycholinguistic theories, they have largely been formalized using symbolic grammars, which assign discrete, uniform costs to syntactic predictions. This study proposes a measure of processing storage cost based on an information-theoretic formalization, as the amount of information previous words carry about future context, under uncertainty. Unlike previous discrete, grammar-based metrics, this measure is continuous, probabilistic, theory-neutral, and can be estimated from pre-trained neural language models. The validity of this approach is demonstrated through three analyses in English: our measure (i) recovers well-known processing asymmetries in center embeddings and relative clauses, (ii) correlates with a grammar-based storage cost in a syntactically-annotated corpus, and (iii) predicts reading-time variance in two large-scale naturalistic datasets over and above baseline models with traditional information-based predictors. Our code is available at https://github.com/kohei-kaji/info-storage.
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cs.CL 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Syntactically-guided Information Maintenance in Sentence Comprehension
Syntactic structure guides selective maintenance of predicted heads and incomplete dependencies during Japanese sentence comprehension, producing independent reading-time effects and a predictability tradeoff not observed in English.