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The successor representation in human reinforcement learning
View ORCID ProfileI Momennejad, View ORCID ProfileEM Russek, JH Cheong, View ORCID ProfileMM Botvinick, View ORCID ProfileN Daw, View ORCID ProfileSJ Gershman
doi: https://doi.org/10.1101/083824
I Momennejad
1Princeton Neuroscience Institute and the Psychology Department, Princeton University
EM Russek
2Center for Neural Science, NYU
JH Cheong
3Department of Psychological and Brain Sciences, Dartmouth College
MM Botvinick
4Google DeepMind and Gatsby Computational Neuroscience Unit, UCL
N Daw
1Princeton Neuroscience Institute and the Psychology Department, Princeton University
SJ Gershman
5Department of Psychology and Center for Brain Science, Harvard University
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Posted October 27, 2016.
The successor representation in human reinforcement learning
I Momennejad, EM Russek, JH Cheong, MM Botvinick, N Daw, SJ Gershman
bioRxiv 083824; doi: https://doi.org/10.1101/083824
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