fMRI predictors based on language models of increasing complexity recover brain left lateralization
Laurent Bonnasse-Gahot, Christophe Pallier

TL;DR
This study shows that larger and more complex language models better predict brain activity during language processing, revealing a left hemisphere dominance consistent with traditional neuropsychological findings.
Contribution
It demonstrates a scaling law linking language model complexity to brain response prediction accuracy and clarifies hemispheric lateralization in language processing.
Findings
Model prediction accuracy increases with model size.
Left hemisphere shows stronger correlation than right.
Scaling law relates model parameters to brain activity fit.
Abstract
Over the past decade, studies of naturalistic language processing where participants are scanned while listening to continuous text have flourished. Using word embeddings at first, then large language models, researchers have created encoding models to analyze the brain signals. Presenting these models with the same text as the participants allows to identify brain areas where there is a significant correlation between the functional magnetic resonance imaging (fMRI) time series and the ones predicted by the models' artificial neurons. One intriguing finding from these studies is that they have revealed highly symmetric bilateral activation patterns, somewhat at odds with the well-known left lateralization of language processing. Here, we report analyses of an fMRI dataset where we manipulate the complexity of large language models, testing 28 pretrained models from 8 different…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · EEG and Brain-Computer Interfaces · Fractal and DNA sequence analysis
