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Temporal structure of natural language processing in the human brain corresponds to layered hierarchy of large language models

Author

Listed:
  • Ariel Goldstein

    (Hebrew University, Department of Cognitive and Brain Sciences
    Hebrew University, Business School
    Google Research)

  • Eric Ham

    (Princeton University, Department of Psychology and the Neuroscience Institute
    University of California, Los Angeles, Bioinformatics Interdepartmental Program)

  • Mariano Schain

    (Google Research)

  • Samuel A. Nastase

    (Princeton University, Department of Psychology and the Neuroscience Institute)

  • Bobbi Aubrey

    (Princeton University, Department of Psychology and the Neuroscience Institute
    New York University Grossman School of Medicine)

  • Zaid Zada

    (Princeton University, Department of Psychology and the Neuroscience Institute)

  • Avigail Grinstein-Dabush

    (Google Research)

  • Harshvardhan Gazula

    (Princeton University, Department of Psychology and the Neuroscience Institute)

  • Amir Feder

    (Google Research)

  • Werner Doyle

    (New York University Grossman School of Medicine)

  • Sasha Devore

    (New York University Grossman School of Medicine)

  • Patricia Dugan

    (New York University Grossman School of Medicine)

  • Daniel Friedman

    (New York University Grossman School of Medicine)

  • Michael Brenner

    (Google Research
    Harvard University, School of Engineering and Applied Science)

  • Avinatan Hassidim

    (Google Research)

  • Yossi Matias

    (Google Research)

  • Orrin Devinsky

    (New York University Grossman School of Medicine)

  • Noam Siegelman

    (Hebrew University, Department of Cognitive and Brain Sciences
    Hebrew University, Department of Psychology)

  • Adeen Flinker

    (New York University Grossman School of Medicine
    New York University Tandon School of Engineering)

  • Omer Levy

    (Tel-Aviv University, Blavatnik School of Computer Science)

  • Roi Reichart

    (Technion—Israel Institute of Technology)

  • Uri Hasson

    (Google Research
    Princeton University, Department of Psychology and the Neuroscience Institute)

Abstract

Large Language Models (LLMs) offer a framework for understanding language processing in the human brain. Unlike traditional models, LLMs represent words and context through layered numerical embeddings. Here, we demonstrate that LLMs’ layer hierarchy aligns with the temporal dynamics of language comprehension in the brain. Using electrocorticography (ECoG) data from participants listening to a 30-minute narrative, we show that deeper LLM layers correspond to later brain activity, particularly in Broca’s area and other language-related regions. We extract contextual embeddings from GPT-2 XL and Llama-2 and use linear models to predict neural responses across time. Our results reveal a strong correlation between model depth and the brain’s temporal receptive window during comprehension. We also compare LLM-based predictions with symbolic approaches, highlighting the advantages of deep learning models in capturing brain dynamics. We release our aligned neural and linguistic dataset as a public benchmark to test competing theories of language processing.

Suggested Citation

  • Ariel Goldstein & Eric Ham & Mariano Schain & Samuel A. Nastase & Bobbi Aubrey & Zaid Zada & Avigail Grinstein-Dabush & Harshvardhan Gazula & Amir Feder & Werner Doyle & Sasha Devore & Patricia Dugan , 2025. "Temporal structure of natural language processing in the human brain corresponds to layered hierarchy of large language models," Nature Communications, Nature, vol. 16(1), pages 1-12, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-65518-0
    DOI: 10.1038/s41467-025-65518-0
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