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Collective incentives reduce over-exploitation of social information in unconstrained human groups

Author

Listed:
  • Dominik Deffner

    (Max Planck Institute for Human Development
    Technical University Berlin)

  • David Mezey

    (Technical University Berlin
    Humboldt University Berlin)

  • Benjamin Kahl

    (Max Planck Institute for Human Development)

  • Alexander Schakowski

    (Max Planck Institute for Human Development)

  • Pawel Romanczuk

    (Technical University Berlin
    Humboldt University Berlin)

  • Charley M. Wu

    (Max Planck Institute for Human Development
    University of Tübingen
    Max Planck Institute for Biological Cybernetics)

  • Ralf H. J. M. Kurvers

    (Max Planck Institute for Human Development
    Technical University Berlin)

Abstract

Collective dynamics emerge from countless individual decisions. Yet, we poorly understand the processes governing dynamically-interacting individuals in human collectives under realistic conditions. We present a naturalistic immersive-reality experiment where groups of participants searched for rewards in different environments, studying how individuals weigh personal and social information and how this shapes individual and collective outcomes. Capturing high-resolution visual-spatial data, behavioral analyses revealed individual-level gains—but group-level losses—of high social information use and spatial proximity in environments with concentrated (vs. distributed) resources. Incentivizing participants at the group (vs. individual) level facilitated adaptation to concentrated environments, buffering apparently excessive scrounging. To infer discrete choices from unconstrained interactions and uncover the underlying decision mechanisms, we developed an unsupervised Social Hidden Markov Decision model. Computational results showed that participants were more sensitive to social information in concentrated environments frequently switching to a social relocation state where they approach successful group members. Group-level incentives reduced participants’ overall responsiveness to social information and promoted higher selectivity over time. Finally, mapping group-level spatio-temporal dynamics through time-lagged regressions revealed a collective exploration-exploitation trade-off across different timescales. Our study unravels the processes linking individual-level strategies to emerging collective dynamics, and provides tools to investigate decision-making in freely-interacting collectives.

Suggested Citation

  • Dominik Deffner & David Mezey & Benjamin Kahl & Alexander Schakowski & Pawel Romanczuk & Charley M. Wu & Ralf H. J. M. Kurvers, 2024. "Collective incentives reduce over-exploitation of social information in unconstrained human groups," Nature Communications, Nature, vol. 15(1), pages 1-13, December.
  • Handle: RePEc:nat:natcom:v:15:y:2024:i:1:d:10.1038_s41467-024-47010-3
    DOI: 10.1038/s41467-024-47010-3
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    References listed on IDEAS

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