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Local versus distributed: A poor taxonomy of neural coding strategies

Published online by Cambridge University Press:  17 March 2005

Michael W. Spratling*
Affiliation:
Centre for Brain and Cognitive Development, Birkbeck College, London, WC1E 7JL, United Kingdom

Abstract:

Page is to be congratulated for challenging some misconceptions about neural representation. However, his target article, and the commentaries to it, highlight that the terms “local” and “distributed” are open to misinterpretation. These terms provide a poor description of neural coding strategies and a better taxonomy might resolve some of the issues.

Type
Continuing Commentary
Copyright
Copyright © Cambridge University Press 2004

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Footnotes

Commentary onMike Page (2000). Connectionist modelling in psychology: A localist manifesto. BBS 23(4):443–512.

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