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How do local reverberations achieve global integration?

Published online by Cambridge University Press:  04 February 2010

J. J. Wright
Affiliation:
Mental Health Research Institute, and Swinburne Center for Applied Neurosdence, Melbourne, Victoria 3052, Australia, jjwacortex.mhri.edu.cu

Abstract

Amit's Hebbian model risks being overexplanatory, since it does not depend on specific physiological modelling of cortical ANNs, but concentrates on those phenomena which are modelled by a large class of ANNs. While offering a strong demonstration of the presence of Hebb's “cell assemblies,” it does not offer an equal account of Hebb's “phase sequence” concept.

Type
Open Peer Commentary
Copyright
Copyright © Cambridge University Press 1995

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