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Self-Confirming Biased Beliefs in Organizational “Learning by Doingâ€

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  • Sanghyun Park
  • Phanish Puranam
  • Wei Zhou

Abstract

Learning by doing, a change in beliefs (and consequently behaviour) due to experience, is crucial to the adaptive behaviours of organizations as well as the individuals that inhabit them. In this review paper, we summarise different pathologies of learning noted in past literature using a common underlying mechanism based on self-confirming biased beliefs. These are inaccurate beliefs about the environment that are self-confirming because acting upon these beliefs prevents their falsification. We provide a formal definition for self-confirming biased beliefs as an attractor that can lock learning by doing systems into suboptimal actions and provide illustrations based on simulations. We then compare and distinguish self-confirming biased beliefs from other related theoretical constructs, including confirmation bias, self-fulfilling prophecies, and sticking points, and underscore that self-confirming biased beliefs underlie inefficient self-confirming equilibria and hot-stove effects. Lastly, we highlight two fundamental ways to escape self-confirming biased beliefs: taking actions inconsistent with beliefs (i.e., exploration) and getting information on unchosen actions (i.e., counterfactuals).

Suggested Citation

  • Sanghyun Park & Phanish Puranam & Wei Zhou, 2021. "Self-Confirming Biased Beliefs in Organizational “Learning by Doingâ€," Complexity, Hindawi, vol. 2021, pages 1-14, January.
  • Handle: RePEc:hin:complx:8865872
    DOI: 10.1155/2021/8865872
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    Cited by:

    1. Chengwei Liu, 2021. "In luck we trust: Capturing the diversity bonus through random selection," Journal of Organization Design, Springer;Organizational Design Community, vol. 10(2), pages 85-91, June.

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