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Neuro-computational mechanisms and individual biases in action-outcome learning under moral conflict

Author

Listed:
  • Laura Fornari

    (KNAW)

  • Kalliopi Ioumpa

    (KNAW)

  • Alessandra D. Nostro

    (KNAW)

  • Nathan J. Evans

    (University of Queensland)

  • Lorenzo Angelis

    (KNAW)

  • Sebastian P. H. Speer

    (KNAW)

  • Riccardo Paracampo

    (KNAW)

  • Selene Gallo

    (KNAW)

  • Michael Spezio

    (Scripps College)

  • Christian Keysers

    (KNAW
    University of Amsterdam)

  • Valeria Gazzola

    (KNAW
    University of Amsterdam)

Abstract

Learning to predict action outcomes in morally conflicting situations is essential for social decision-making but poorly understood. Here we tested which forms of Reinforcement Learning Theory capture how participants learn to choose between self-money and other-shocks, and how they adapt to changes in contingencies. We find choices were better described by a reinforcement learning model based on the current value of separately expected outcomes than by one based on the combined historical values of past outcomes. Participants track expected values of self-money and other-shocks separately, with the substantial individual difference in preference reflected in a valuation parameter balancing their relative weight. This valuation parameter also predicted choices in an independent costly helping task. The expectations of self-money and other-shocks were biased toward the favored outcome but fMRI revealed this bias to be reflected in the ventromedial prefrontal cortex while the pain-observation network represented pain prediction errors independently of individual preferences.

Suggested Citation

  • Laura Fornari & Kalliopi Ioumpa & Alessandra D. Nostro & Nathan J. Evans & Lorenzo Angelis & Sebastian P. H. Speer & Riccardo Paracampo & Selene Gallo & Michael Spezio & Christian Keysers & Valeria Ga, 2023. "Neuro-computational mechanisms and individual biases in action-outcome learning under moral conflict," Nature Communications, Nature, vol. 14(1), pages 1-18, December.
  • Handle: RePEc:nat:natcom:v:14:y:2023:i:1:d:10.1038_s41467-023-36807-3
    DOI: 10.1038/s41467-023-36807-3
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