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Perceptual interventions ameliorate statistical discrimination in learning agents

Author

Listed:
  • Edgar A. Duéñez-Guzmán

    (a Google DeepMind, Google UK Ltd. , London EC4A 3TW , United Kingdom)

  • Ramona Comanescu

    (a Google DeepMind, Google UK Ltd. , London EC4A 3TW , United Kingdom)

  • Yiran Mao

    (a Google DeepMind, Google UK Ltd. , London EC4A 3TW , United Kingdom)

  • Kevin R. McKee

    (a Google DeepMind, Google UK Ltd. , London EC4A 3TW , United Kingdom)

  • Ben Coppin

    (a Google DeepMind, Google UK Ltd. , London EC4A 3TW , United Kingdom)

  • Suzanne Sadedin

    (b Independent researcher , London N1C 4DN , United Kingdom)

  • Silvia Chiappa

    (a Google DeepMind, Google UK Ltd. , London EC4A 3TW , United Kingdom)

  • Alexander S. Vezhnevets

    (a Google DeepMind, Google UK Ltd. , London EC4A 3TW , United Kingdom)

  • Michiel A. Bakker

    (a Google DeepMind, Google UK Ltd. , London EC4A 3TW , United Kingdom)

  • Yoram Bachrach

    (a Google DeepMind, Google UK Ltd. , London EC4A 3TW , United Kingdom)

  • William Isaac

    (a Google DeepMind, Google UK Ltd. , London EC4A 3TW , United Kingdom)

  • Karl Tuyls

    (a Google DeepMind, Google UK Ltd. , London EC4A 3TW , United Kingdom)

  • Joel Z. Leibo

    (a Google DeepMind, Google UK Ltd. , London EC4A 3TW , United Kingdom)

Abstract

Choosing social partners is a potentially demanding task which involves paying attention to the right information while disregarding salient but possibly irrelevant features. The resultant trade-off between cost of evaluation and quality of decisions can lead to undesired bias. Information-processing abilities mediate this trade-off, where individuals with higher ability choose better partners leading to higher performance. By altering the salience of features, technology can modulate the effect of information-processing limits, potentially increasing or decreasing undesired biases. Here, we use game theory and multiagent reinforcement learning to investigate how undesired biases emerge, and how a technological layer (in the form of a perceptual intervention) between individuals and their environment can ameliorate such biases. Our results show that a perceptual intervention designed to increase the salience of outcome-relevant features can reduce bias in agents making partner choice decisions. Individuals learning with a perceptual intervention showed less bias due to decreased reliance on features that only spuriously correlate with behavior. Mechanistically, the perceptual intervention effectively increased the information-processing abilities of the individuals. Our results highlight the benefit of using multiagent reinforcement learning to model theoretically grounded social behaviors, particularly when real-world complexity prohibits fully analytical approaches.

Suggested Citation

  • Edgar A. Duéñez-Guzmán & Ramona Comanescu & Yiran Mao & Kevin R. McKee & Ben Coppin & Suzanne Sadedin & Silvia Chiappa & Alexander S. Vezhnevets & Michiel A. Bakker & Yoram Bachrach & William Isaac, 2025. "Perceptual interventions ameliorate statistical discrimination in learning agents," Proceedings of the National Academy of Sciences, Proceedings of the National Academy of Sciences, vol. 122(25), pages 2319933121-, June.
  • Handle: RePEc:nas:journl:v:122:y:2025:p:e2319933121
    DOI: 10.1073/pnas.2319933121
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