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Chaotic itinerancy is a key to mental diversity

Published online by Cambridge University Press:  14 February 2005

Ichiro Tsuda*
Affiliation:
Department of Mathematics, Hokkaido University, Sapporo060-0810, Japanhttp://www.math.sci.hokudai.ac.jp/~tsuda/

Abstract:

Kampis proposes the study of chaotic itinerancy, pointing out its significance in domains of cognitive science and philosophy. He has discovered in the concept of chaotic itinerancy the possibility for a new dynamical approach that elucidates mental states with a physical basis. This approach may therefore provide the means to go beyond the connectionist approach. In accordance with his theory, I here highlight three issues regarding chaotic itinerancy: transitory dynamics, diversity, and self-modifying system.

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Author's Response
Copyright
Copyright © Cambridge University Press 2004

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Footnotes

Commentary onIchiro Tsuda (2001). Toward an interpretation of dynamic neural activity in terms of chaotic dynamical systems. BBS 24(5):793–810.

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