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A Unifying Probabilistic View of Associative Learning

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2015

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Public Library of Science
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Gershman, Samuel J. 2015. “A Unifying Probabilistic View of Associative Learning.” PLoS Computational Biology 11 (11): e1004567. doi:10.1371/journal.pcbi.1004567. http://dx.doi.org/10.1371/journal.pcbi.1004567.

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Abstract

Two important ideas about associative learning have emerged in recent decades: (1) Animals are Bayesian learners, tracking their uncertainty about associations; and (2) animals acquire long-term reward predictions through reinforcement learning. Both of these ideas are normative, in the sense that they are derived from rational design principles. They are also descriptive, capturing a wide range of empirical phenomena that troubled earlier theories. This article describes a unifying framework encompassing Bayesian and reinforcement learning theories of associative learning. Each perspective captures a different aspect of associative learning, and their synthesis offers insight into phenomena that neither perspective can explain on its own.

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