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Repeated Observations for Classification

Abstract

We study the problem nonparametric classification with repeated observations. Let \bX\bX be the dd dimensional feature vector and let YY denote the label taking values in {1,,M}\{1,\dots ,M\}. In contrast to usual setup with large sample size nn and relatively low dimension dd, this paper deals with the situation, when instead of observing a single feature vector \bX\bX we are given tt repeated feature vectors $\bV_1,\dots ,\bV_t $. Some simple classification rules are presented such that the conditional error probabilities have exponential convergence rate of convergence as tt\to\infty. In the analysis, we investigate particular models like robust detection by nominal densities, prototype classification, linear transformation, linear classification, scaling.

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