Non Parametric Classification Using Learning Vector Quantization
Abstract:
We study several properties of Learning Vector Quantization LVQ. LVQ is a nonparametric detection scheme proposed in the neural network community by Kohonen. We examine it in detail, both theoretical and experimentally, to determine its properties as a nonparametric classifier. In particular, we study the convergence of the parameter adjustment rule in LVQ, we present a modification to LVQ which results in improving he convergence of the algorithm, we show that LVQ performs as well as other classifiers on two sets of a simulations, and we show that the classification error associated with LVQ can be made arbitrarily small. r.r.h.
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