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Adaptive learning under expected and unexpected uncertainty

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NATURE REVIEWS NEUROSCIENCE
卷 20, 期 10, 页码 635-644

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NATURE PUBLISHING GROUP
DOI: 10.1038/s41583-019-0180-y

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资金

  1. US National Institutes of Health [R01DA047870]
  2. University of California-Los Angeles (UCLA) Division of Life Sciences Recruitment and Retention Fund
  3. UCLA Academic Senate Grant

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The outcome of a decision is often uncertain, and outcomes can vary over repeated decisions. Whether decision outcomes should substantially affect behaviour and learning depends on whether they are representative of a typically experienced range of outcomes or signal a change in the reward environment. Successful learning and decision-making therefore require the ability to estimate expected uncertainty (related to the variability of outcomes) and unexpected uncertainty (related to the variability of the environment). Understanding the bases and effects of these two types of uncertainty and the interactions between them - at the computational and the neural level - is crucial for understanding adaptive learning. Here, we examine computational models and experimental findings to distil computational principles and neural mechanisms for adaptive learning under uncertainty.

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