Dynamics of Learning in Simple Perceptrons

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Published under licence by IOP Publishing Ltd
, , Citation J A Hertz et al 1989 Phys. Scr. 1989 149 DOI 10.1088/0031-8949/1989/T25/026

1402-4896/1989/T25/149

Abstract

We examine the statistical dynamics of learning in a single-layer network in the presence of noise using a Langevin model. The learning scheme is linear (the delta rule) and we add a chemical potential term to constrain the size of the couplings. For random uncorrelated input patterns the average relaxation time is calculated by linear response theory and we find the critical storage capacity. It turns out that noise reduces the learning time. Without the constraint noise has no effect on the relaxation time. Finally we study the case of unsupervised Hebbian learning and find that the relaxation time increases with noise.

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10.1088/0031-8949/1989/T25/026