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Article contents
Resource-rationality and dynamic coupling of brains and social environments
Published online by Cambridge University Press: 11 March 2020
Abstract
Leider and Griffiths clarify the basis for unification between mechanism-driven and solution-driven disciplines and methodologies in cognitive science. But, two outstanding issues arise for their model of resource-rationality: human brains co-process information with their environments, rather than merely adapt to them; and this is expressed in methodological differences between disciplines that complicate Leider and Griffiths’ proposed structural unification.
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- Open Peer Commentary
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- Copyright © Cambridge University Press 2020
Target article
Resource-rational analysis: Understanding human cognition as the optimal use of limited computational resources
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Author response
Advancing rational analysis to the algorithmic level