Syntactically-guided Information Maintenance in Sentence Comprehension
arXiv cs.CL / 5/1/2026
📰 NewsModels & Research
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.
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