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Reverberation reconsidered: On the path to cognitive theory
Published online by Cambridge University Press: 04 February 2010
Abstract
Amit's work addresses a critical issue in cognitive science: the structure of neural representations. The use of Hebbian cell assemblies is a positive step, and we now need to consider its role in a larger cognitive theory. When considering the dynamics of a system built out of attractors, a more limited version of reverberation becomes necessary.
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