Sigma-Pi Learning: On Radial Basis Functions and Cortical Associative Learning

Mel, Bartlett W., Koch, Christof

Neural Information Processing Systems 

The goal in this work has been to identify the neuronal elements of the cortical column that are most likely to support the learning of nonlinear associative maps. We show that a particular style of network learning algorithm based on locally-tuned receptive fields maps naturally onto cortical hardware, and gives coherence to a variety of features of cortical anatomy, physiology, and biophysics whose relations to learning remain poorly understood.

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