Selection of the Linear and the Quadratic Discriminant Functions when the Difference between Two Covariance Matrices is Small

Tomoyuki Nakagawa, H. Wakaki
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引用次数: 1

Abstract

We consider selecting of the linear and the quadratic discriminant functions in two normal populations. We do not know which of two discriminant functions lowers the expected probability of misclassification. When difference of the covariance matrices is large, it is known that the expected probability of misclassification of the quadratic discriminant functions is smaller than that of linear discriminant function. Therefore, we should consider only the selection when the difference between covariance matrices is small. In this paper we suggest a selection method using asymptotic expansion for the linear and the quadratic discriminant functions when the difference between the covariance matrices is small.
两个协方差矩阵之差较小时线性和二次判别函数的选择
考虑了两个正态总体中线性判别函数和二次判别函数的选择。我们不知道两个判别函数中哪一个降低误分类的期望概率。当协方差矩阵的差较大时,可知二次判别函数的期望误分类概率小于线性判别函数的期望误分类概率。因此,我们只需要考虑协方差矩阵之间的差较小时的选择。本文提出了一种利用渐近展开式对线性和二次判别函数在协方差矩阵差很小时的选择方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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