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Intentional change, intrinsic motivations, and goal generation

Published online by Cambridge University Press:  27 August 2014

Riccardo Manzotti
Affiliation:
Institute of Communication, Consumption, and Behavior “G. P. Fabris,” IULM University, 20142 Milano, Italy. [email protected]@iulm.itwww.consciousness.it
Paolo Moderato
Affiliation:
Institute of Communication, Consumption, and Behavior “G. P. Fabris,” IULM University, 20142 Milano, Italy. [email protected]@iulm.itwww.consciousness.it

Abstract

Wilson et al. draw our attention to the problem of a science of intentional change. We stress the connection between their approach and existing paradigms for learning and goal generation that have been developed in machine learning, artificial intelligence, and psychology. These paradigms outline the structural principles of a domain-general and teleologically open agent.

Type
Open Peer Commentary
Copyright
Copyright © Cambridge University Press 2014 

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