Driving and suppressing the human language network using large language models

Generating sentences that control language system activations in the human brain

Tags: papers adversarial-nlp cognitive-neuroscience psycholinguistics constrained-decoding 

  1. Nature H B-2024
    Driving and suppressing the human language network using large language models
    Tuckute, Greta, Sathe, Aalok, Srikant, Shashank, Taliaferro, Maya, Wang, Mingye, Schrimpf, Martin, Kay, Kendrick, and Fedorenko, Evelina
    Nature Human Behaviour 2024

Abstract

Transformer models such as GPT generate human-like language and are predictive of human brain responses to language. Here, using functional-MRI-measured brain responses to 1,000 diverse sentences, we first show that a GPT-based encoding model can predict the magnitude of the brain response associated with each sentence. We then use the model to identify new sentences that are predicted to drive or suppress responses in the human language network. We show that these model-selected novel sentences indeed strongly drive and suppress the activity of human language areas in new individuals. A systematic analysis of the model-selected sentences reveals that surprisal and well-formedness of linguistic input are key determinants of response strength in the language network. These results establish the ability of neural network models to not only mimic human language but also non-invasively control neural activity in higher-level cortical areas, such as the language network.

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