Syntactically-guided Information Maintenance in Sentence Comprehension

arXiv cs.CL / 5/1/2026

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Key Points

  • The paper argues that, during real-time sentence comprehension, people maintain information in a context selectively based on what is crucial for future prediction, rather than doing it uniformly.
  • It proposes that the cognitive cost of information maintenance is driven by two distinct factors: the number of predicted heads and the number of incomplete dependencies.
  • Contrary to earlier work that treated these factors as interchangeable or competing explanations, the authors claim they are not reducible to one another.
  • Using naturalistic reading-time data from Japanese—a language where the two factors separate more clearly—the study provides evidence supporting the non-reducibility of the two cost drivers.
  • The authors also find a tradeoff: readers who slow down due to maintenance gain more from predictability, further reinforcing the proposed syntactically guided maintenance account.

Abstract

Maintaining information in context is essential in successful real-time language comprehension, but maintenance is cognitively costly and can slow processing. We hypothesize that rational language users selectively maintain information that is crucial for future prediction, guided by syntactic structure. Under this view, two factors affect maintenance cost: the number of predicted heads and the number of incomplete dependencies. Although these factors have been treated as competing hypotheses in the literature, our account predicts that they are not reducible to one another. We show this is the case, using a naturalistic reading time dataset in Japanese, a language in which the two factors contrast particularly clearly. We further show that there is a tradeoff such that readers that slow down for maintenance tend to benefit more from predictability, providing additional support for the proposed account.