Training multilayer perceptron classifiers based on a modifiedsupport vector method
Suykens, J.A.K.; Vandewalle, J.
Neural Networks, IEEE Transactions on
Volume 10, Issue 4, Jul 1999 Page(s):907 - 911
Digital Object Identifier 10.1109/72.774254
Summary:In this paper we describe a training method for one hidden layer
multilayer perceptron classifier which is based on the idea of support
vector machines (SVM). An upper bound on the Vapnik-Chervonenkis (VC)
dimension is iteratively minimized over the interconnection matrix of
the hidden layer and its bias vector. The output weights are determined
according to the support vector method, but without making use of the
classifier form which is related to Mercer's condition. The method is
illustrated on a two-spiral classification problem
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