
pmid: 39534445
pmc: PMC11556436
Abstract When we understand language, we recognize words and combine them into sentences. In this article, we explore the hypothesis that listeners use probabilistic information about words to build syntactic structure. Recent work has shown that lexical probability and syntactic structure both modulate the delta-band (<4 Hz) neural signal. Here, we investigated whether the neural encoding of syntactic structure changes as a function of the distributional properties of a word. To this end, we analyzed MEG data of 24 native speakers of Dutch who listened to three fairytales with a total duration of 49 min. Using temporal response functions and a cumulative model-comparison approach, we evaluated the contributions of syntactic and distributional features to the variance in the delta-band neural signal. This revealed that lexical surprisal values (a distributional feature), as well as bottom-up node counts (a syntactic feature) positively contributed to the model of the delta-band neural signal. Subsequently, we compared responses to the syntactic feature between words with high- and low-surprisal values. This revealed a delay in the response to the syntactic feature as a consequence of the surprisal value of the word: high-surprisal values were associated with a delayed response to the syntactic feature by 150–190 ms. The delay was not affected by word duration, and did not have a lexical origin. These findings suggest that the brain uses probabilistic information to infer syntactic structure, and highlight an importance for the role of time in this process.
Neurophysiology and neuropsychology, Language. Linguistic theory. Comparative grammar, P101-410, Psycholinguistics, Neuroscience and Neurobiology, Cognitive Neuroscience, QP351-495, Life Sciences, Linguistics, 270 Language and Computation in Neural Systems, Social and Behavioral Sciences, Psycholinguistics and Neurolinguistics, Research Article
Neurophysiology and neuropsychology, Language. Linguistic theory. Comparative grammar, P101-410, Psycholinguistics, Neuroscience and Neurobiology, Cognitive Neuroscience, QP351-495, Life Sciences, Linguistics, 270 Language and Computation in Neural Systems, Social and Behavioral Sciences, Psycholinguistics and Neurolinguistics, Research Article
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