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Reinforcement Learning: Computational Roles for Dopamine, Striatum, and Hippocampus

Reinforcement Learning: Computational Roles for Dopamine, Striatum, and Hippocampus. 1:00-1:05 Welcome to the symposium (Jay McClelland) 1:05-1:30 Introduction and overview (Sam McClure) 1:30-2:20 From bees to comp’l psychiatry (Read Montague)

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Reinforcement Learning: Computational Roles for Dopamine, Striatum, and Hippocampus

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  1. Reinforcement Learning: Computational Roles for Dopamine, Striatum, and Hippocampus 1:00-1:05 Welcome to the symposium (Jay McClelland) 1:05-1:30 Introduction and overview (Sam McClure) 1:30-2:20 From bees to comp’lpsychiatry (Read Montague) 2:20-3:10 Learning latent structure (Yael Niv) 3:10-3:30 Coffee break 3:30-4:20 Linking context and reward(Gary Aston-Jones) 4:20-5:00 Panel and audience discussion 5:00-6:00  Wine and Cheese Reception February 29, 2012  Stanford University

  2. Sam McClureDepartment of Psychology, Stanford • Behavioral studies, functional and structural imaging, and computational modeling to explore the neural basis of reward-related decision making. • Widely known for his work on choice between immediate and delayed rewards, and for the view that multiple brain systems contribute when we make such decisions.

  3. P. Read Montague, PhDVirginia Tech & University College London • Pioneered work relating dopamine to reinforcement learning algorithms • Remains at the forefront of using neuroscience to develop computational model of decision-making.

  4. Yael Niv, Ph. D.Neuroscience and Psychology, Princeton • Combines optimal statistics analysis and reinforcement learning with measures of brain function to develop models of the neuroscience of learning and decision-making. • Yael has explored how anticipated value is translated into effort, how goals are managed in the human brain, and how the hippocampus facilitates reward learning.

  5. Gary Aston-Jones, PhDMedical University of South Carolina • Gary’s foundational research has led to new theories for the role of the locus coeruleus and norepinephrine in attention and behavioral control. • His recent work has uncovered a circuit critical for motivated behavior, linking the hippocampus to the dopaminergic midbrain.

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