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A foundation model to predict and capture human cognition

Author

Listed:
  • Marcel Binz

    (Helmholtz Center)

  • Elif Akata

    (Helmholtz Center)

  • Matthias Bethge

    (University of Tübingen)

  • Franziska Brändle

    (University of Oxford
    Max Planck Institute for Biological Cybernetics)

  • Fred Callaway

    (New York University)

  • Julian Coda-Forno

    (Helmholtz Center)

  • Peter Dayan

    (University of Tübingen
    Max Planck Institute for Biological Cybernetics)

  • Can Demircan

    (Helmholtz Center)

  • Maria K. Eckstein

    (Google DeepMind)

  • Noémi Éltető

    (Max Planck Institute for Biological Cybernetics)

  • Thomas L. Griffiths

    (Princeton University)

  • Susanne Haridi

    (Helmholtz Center
    Max Planck School of Cognition)

  • Akshay K. Jagadish

    (Helmholtz Center
    University of Tübingen
    Max Planck Institute for Biological Cybernetics)

  • Li Ji-An

    (University of California, San Diego)

  • Alexander Kipnis

    (Helmholtz Center)

  • Sreejan Kumar

    (Princeton University)

  • Tobias Ludwig

    (University of Tübingen
    Max Planck Institute for Biological Cybernetics)

  • Marvin Mathony

    (Helmholtz Center)

  • Marcelo Mattar

    (New York University)

  • Alireza Modirshanechi

    (Helmholtz Center)

  • Surabhi S. Nath

    (University of Tübingen
    Max Planck Institute for Biological Cybernetics
    Max Planck School of Cognition)

  • Joshua C. Peterson

    (Boston University)

  • Milena Rmus

    (Helmholtz Center)

  • Evan M. Russek

    (Princeton University)

  • Tankred Saanum

    (Helmholtz Center
    Max Planck Institute for Biological Cybernetics)

  • Johannes A. Schubert

    (Max Planck Institute for Biological Cybernetics)

  • Luca M. Schulze Buschoff

    (Helmholtz Center)

  • Nishad Singhi

    (TU Darmstadt)

  • Xin Sui

    (University of Tübingen
    Max Planck Institute for Biological Cybernetics)

  • Mirko Thalmann

    (Helmholtz Center)

  • Fabian J. Theis

    (Helmholtz Center
    Technical University of Munich
    Technical University of Munich)

  • Vuong Truong

    (Max Planck Institute for Biological Cybernetics)

  • Vishaal Udandarao

    (University of Tübingen
    University of Cambridge)

  • Konstantinos Voudouris

    (Helmholtz Center)

  • Robert Wilson

    (Georgia Institute of Technology)

  • Kristin Witte

    (Helmholtz Center)

  • Shuchen Wu

    (Helmholtz Center)

  • Dirk U. Wulff

    (University of Basel
    Max Planck Institute for Human Development)

  • Huadong Xiong

    (Georgia Institute of Technology)

  • Eric Schulz

    (Helmholtz Center)

Abstract

Establishing a unified theory of cognition has been an important goal in psychology1,2. A first step towards such a theory is to create a computational model that can predict human behaviour in a wide range of settings. Here we introduce Centaur, a computational model that can predict and simulate human behaviour in any experiment expressible in natural language. We derived Centaur by fine-tuning a state-of-the-art language model on a large-scale dataset called Psych-101. Psych-101 has an unprecedented scale, covering trial-by-trial data from more than 60,000 participants performing in excess of 10,000,000 choices in 160 experiments. Centaur not only captures the behaviour of held-out participants better than existing cognitive models, but it also generalizes to previously unseen cover stories, structural task modifications and entirely new domains. Furthermore, the model’s internal representations become more aligned with human neural activity after fine-tuning. Taken together, our results demonstrate that it is possible to discover computational models that capture human behaviour across a wide range of domains. We believe that such models provide tremendous potential for guiding the development of cognitive theories, and we present a case study to demonstrate this.

Suggested Citation

  • Marcel Binz & Elif Akata & Matthias Bethge & Franziska Brändle & Fred Callaway & Julian Coda-Forno & Peter Dayan & Can Demircan & Maria K. Eckstein & Noémi Éltető & Thomas L. Griffiths & Susanne Harid, 2025. "A foundation model to predict and capture human cognition," Nature, Nature, vol. 644(8078), pages 1002-1009, August.
  • Handle: RePEc:nat:nature:v:644:y:2025:i:8078:d:10.1038_s41586-025-09215-4
    DOI: 10.1038/s41586-025-09215-4
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