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Risk, Unexpected Uncertainty, and Estimation Uncertainty: Bayesian Learning in Unstable Settings

Overview of attention for article published in PLoS Computational Biology, January 2011
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Title
Risk, Unexpected Uncertainty, and Estimation Uncertainty: Bayesian Learning in Unstable Settings
Published in
PLoS Computational Biology, January 2011
DOI 10.1371/journal.pcbi.1001048
Pubmed ID
Authors

Elise Payzan-LeNestour, Peter Bossaerts

Abstract

Recently, evidence has emerged that humans approach learning using Bayesian updating rather than (model-free) reinforcement algorithms in a six-arm restless bandit problem. Here, we investigate what this implies for human appreciation of uncertainty. In our task, a Bayesian learner distinguishes three equally salient levels of uncertainty. First, the Bayesian perceives irreducible uncertainty or risk: even knowing the payoff probabilities of a given arm, the outcome remains uncertain. Second, there is (parameter) estimation uncertainty or ambiguity: payoff probabilities are unknown and need to be estimated. Third, the outcome probabilities of the arms change: the sudden jumps are referred to as unexpected uncertainty. We document how the three levels of uncertainty evolved during the course of our experiment and how it affected the learning rate. We then zoom in on estimation uncertainty, which has been suggested to be a driving force in exploration, in spite of evidence of widespread aversion to ambiguity. Our data corroborate the latter. We discuss neural evidence that foreshadowed the ability of humans to distinguish between the three levels of uncertainty. Finally, we investigate the boundaries of human capacity to implement Bayesian learning. We repeat the experiment with different instructions, reflecting varying levels of structural uncertainty. Under this fourth notion of uncertainty, choices were no better explained by Bayesian updating than by (model-free) reinforcement learning. Exit questionnaires revealed that participants remained unaware of the presence of unexpected uncertainty and failed to acquire the right model with which to implement Bayesian updating.

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The data shown below were compiled from readership statistics for 405 Mendeley readers of this research output. Click here to see the associated Mendeley record.

Geographical breakdown

Country Count As %
United States 13 3%
Germany 6 1%
France 5 1%
United Kingdom 5 1%
Japan 3 <1%
Switzerland 3 <1%
China 2 <1%
Kenya 1 <1%
Netherlands 1 <1%
Other 7 2%
Unknown 359 89%

Demographic breakdown

Readers by professional status Count As %
Student > Ph. D. Student 128 32%
Researcher 65 16%
Student > Master 54 13%
Student > Bachelor 27 7%
Professor > Associate Professor 20 5%
Other 62 15%
Unknown 49 12%
Readers by discipline Count As %
Psychology 128 32%
Agricultural and Biological Sciences 53 13%
Neuroscience 47 12%
Computer Science 25 6%
Engineering 15 4%
Other 65 16%
Unknown 72 18%