Information-Restricted Neural Language Models Reveal Different Brain Regions’ Sensitivity to Semantics, Syntax, and Context

Author:

Pasquiou Alexandre12ORCID,Lakretz Yair1,Thirion Bertrand2,Pallier Christophe1

Affiliation:

1. Cognitive Neuroimaging Unit (UNICOG), NeuroSpin, National Institute of Health and Medical Research (Inserm) and French Alternative Energies and Atomic Energy Commission (CEA), Frédéric Joliot Life Sciences Institute, Paris-Saclay University, Gif-sur-Yvette, France

2. Models and Inference for Neuroimaging Data (MIND), NeuroSpin, French Alternative Energies and Atomic Energy Commission (CEA), Inria Saclay, Frédéric Joliot Life Sciences Institute, Paris-Saclay University, Gif-sur-Yvette, France

Abstract

Abstract A fundamental question in neurolinguistics concerns the brain regions involved in syntactic and semantic processing during speech comprehension, both at the lexical (word processing) and supra-lexical levels (sentence and discourse processing). To what extent are these regions separated or intertwined? To address this question, we introduce a novel approach exploiting neural language models to generate high-dimensional feature sets that separately encode semantic and syntactic information. More precisely, we train a lexical language model, GloVe, and a supra-lexical language model, GPT-2, on a text corpus from which we selectively removed either syntactic or semantic information. We then assess to what extent the features derived from these information-restricted models are still able to predict the fMRI time courses of humans listening to naturalistic text. Furthermore, to determine the windows of integration of brain regions involved in supra-lexical processing, we manipulate the size of contextual information provided to GPT-2. The analyses show that, while most brain regions involved in language comprehension are sensitive to both syntactic and semantic features, the relative magnitudes of these effects vary across these regions. Moreover, regions that are best fitted by semantic or syntactic features are more spatially dissociated in the left hemisphere than in the right one, and the right hemisphere shows sensitivity to longer contexts than the left. The novelty of our approach lies in the ability to control for the information encoded in the models’ embeddings by manipulating the training set. These “information-restricted” models complement previous studies that used language models to probe the neural bases of language, and shed new light on its spatial organization.

Funder

National Science Foundation

Agence Nationale de la Recherche

HORIZON EUROPE Framework Programme

KARAIB AI chair

Publisher

MIT Press

Subject

Neurology,Linguistics and Language

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