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Learning grey-toned patterns in neural networks
Stephan Mertens, Horst M. Köhler and Siegfried Bös
Abstract
The problem of learning multi-state patterns in neural networks is investigated. An analysis
of the space of couplings (Gardner approach) yields the distribution of local fields, the
critical storage capacity $\alpha_c$ and the minimum number of errors for an overloaded
network. For noisy local fields the classification error is minimized if the local fields
of the patterns are allowed to lie in intervals of finite width. A fast converging, adaptive
learning algorithm is presented, which finds the coupling matrix of optimal stability.
BiBTeX Entry
@article{, author = {Stephan Mertens and Horst M.~K\"ohler and Siegfried B\"os}, title = {Learning grey-toned patterns in neural networks}, journal = {J.~Phys.~A}, year = {1991}, volume = {24}, pages = {4941-4952} }
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