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Poster
The rat as particle filter
Nathaniel D Daw · Aaron Courville
Author Information
Nathaniel D Daw (New York University)
Nathaniel Daw is Assistant Professor of Neural Science and Psychology and Affiliated Assistant Professor of Computer Science at New York University. Prior to this he completed his PhD in Computer Science at Carnegie Mellon University and pursued postdoctoral research at the Gatsby Computational Neuroscience Unit at UCL. His research concerns reinforcement learning and decision making from a computational approach, and particularly the application of computational models to the analysis of behavioral and neural data. He is the recipient of a McKnight Scholar Award, a NARSAD Young Investigator Award, and a Royal Society USA Research Fellowship.
Aaron Courville (Mila, U. Montreal)
Related Events (a corresponding poster, oral, or spotlight)
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2007 Spotlight: The rat as particle filter »
Thu. Dec 6th 01:20 -- 01:30 AM Room
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