Repeated Observations for Classification

Abstract

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

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