Neural Basis of Reinforcement Learning and Decision Making

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Reinforcement learning is an adaptive process in which an animal utilizes its previous experience to improve the outcomes of future choices. Computational theories of reinforcement learning play a central role in the newly emerging areas of neuroeconomics and decision neuroscience. In this framework, actions are chosen according to their value functions, which describe how much future reward is expected from each action. Value functions can be adjusted not only through reward and penalty, but also by the animal's knowledge of its current environment. Studies have revealed that a large proportion of the brain is involved in representing and updating value functions and using them to choose an action. However, how the nature of a behavioral task affects the neural mechanisms of reinforcement learning remains incompletely understood. Future studies should uncover the principles by which different computational elements of reinforcement learning are dynamically coordinated across the entire brain.
Publisher
ANNUAL REVIEWS
Issue Date
2012-07
Language
English
Article Type
Review; Book Chapter
Citation

ANNUAL REVIEW OF NEUROSCIENCE, v.35, pp.287 - 308

ISSN
0147-006X
DOI
10.1146/annurev-neuro-062111-150512
URI
http://hdl.handle.net/10203/102454
Appears in Collection
BS-Journal Papers(저널논문)
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