4.5 Review

Generalization of value in reinforcement learning by humans

Journal

EUROPEAN JOURNAL OF NEUROSCIENCE
Volume 35, Issue 7, Pages 1092-1104

Publisher

WILEY
DOI: 10.1111/j.1460-9568.2012.08017.x

Keywords

computational model; hippocampus; memory; reward; ventral striatum

Categories

Funding

  1. NIDA [R03 DA026957]
  2. NINDS [R01 NS 078784]
  3. Brain and Behavior Research Foundation (NARSAD)
  4. McKnight Foundation
  5. McDonnell Foundation

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Research in decision-making has focused on the role of dopamine and its striatal targets in guiding choices via learned stimulusreward or stimulusresponse associations, behavior that is well described by reinforcement learning theories. However, basic reinforcement learning is relatively limited in scope and does not explain how learning about stimulus regularities or relations may guide decision-making. A candidate mechanism for this type of learning comes from the domain of memory, which has highlighted a role for the hippocampus in learning of stimulusstimulus relations, typically dissociated from the role of the striatum in stimulusresponse learning. Here, we used functional magnetic resonance imaging and computational model-based analyses to examine the joint contributions of these mechanisms to reinforcement learning. Humans performed a reinforcement learning task with added relational structure, modeled after tasks used to isolate hippocampal contributions to memory. On each trial participants chose one of four options, but the reward probabilities for pairs of options were correlated across trials. This (uninstructed) relationship between pairs of options potentially enabled an observer to learn about option values based on experience with the other options and to generalize across them. We observed blood oxygen level-dependent (BOLD) activity related to learning in the striatum and also in the hippocampus. By comparing a basic reinforcement learning model to one augmented to allow feedback to generalize between correlated options, we tested whether choice behavior and BOLD activity were influenced by the opportunity to generalize across correlated options. Although such generalization goes beyond standard computational accounts of reinforcement learning and striatal BOLD, both choices and striatal BOLD activity were better explained by the augmented model. Consistent with the hypothesized role for the hippocampus in this generalization, functional connectivity between the ventral striatum and hippocampus was modulated, across participants, by the ability of the augmented model to capture participants choice. Our results thus point toward an interactive model in which striatal reinforcement learning systems may employ relational representations typically associated with the hippocampus.

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