Neuro Forum Intelligence moderates reinforcement learning: a mini-review of the neural evidence
نویسنده
چکیده
Chen C. Intelligence moderates reinforcement learning: a minireview of the neural evidence. J Neurophysiol 113: 3459–3461, 2015. First published September 3, 2014; doi:10.1152/jn.00600.2014.—Our understanding of the neural basis of reinforcement learning and intelligence, two key factors contributing to human strivings, has progressed significantly recently. However, the overlap of these two lines of research, namely, how intelligence affects neural responses during reinforcement learning, remains uninvestigated. A mini-review of three existing studies suggests that higher IQ (especially fluid IQ) may enhance the neural signal of positive prediction error in dorsolateral prefrontal cortex, dorsal anterior cingulate cortex, and striatum, several brain substrates of reinforcement learning or intelligence.
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Neuro Forum Intelligence Moderates Reinforcement Learning: a Mini-review of the Neural Evidence Acknowledgements: I Thank Peter Dayan and Nathaniel Daw for Their
Neuro Forum 1 2 3 Intelligence moderates reinforcement learning: a mini-review of the neural evidence 4 5 6 Chong Chen 1 7 1 Department of Psychiatry, Hokkaido University Graduate School of 8 Medicine, Sapporo 060-8638, Japan. Tel: (81)11-706-5973; Fax: (81)11-7069 5081; E-mail: [email protected] 10 11 12
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Our understanding of the neural basis of reinforcement learning and intelligence, two key factors contributing to human strivings, has progressed significantly recently. However, the overlap of these two lines of research, namely, how intelligence affects neural responses during reinforcement learning, remains uninvestigated. A mini-review of three existing studies suggests that higher IQ (espe...
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