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Re-evaluating the role of the Mahalanobis distance measure

机译:重新评估马氏距离测度的作用

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摘要

It is shown that the sum of squares of the standardised scores of all non-zero principal components (PCs) equals the squared Mahalanobis distance. A new distance measure, the reduced Mahalanobis distance, is explored in which the number of PCs retained is less than the full rank model. It is illustrated by both one-class and two-class classifiers. Linear discriminant analysis can be employed as a soft model, and principal component analysis using the pooled variance-covariance matrix is introduced as an intermediate view between conjoint and disjoint models allowing linear discriminant analysis to be used on these reduced rank models. By choosing the most discriminatory PCs, it can be shown that the reduced Mahalanobis distance has superior performance over the full rank model for discriminating via soft models. Copyright (c) 2016 John Wiley & Sons, Ltd.
机译:结果表明,所有非零主成分(PC)的标准化分数的平方和等于平方的马氏距离。探索了一种新的距离度量,即减小的马氏距离,该方法中保留的PC数量少于完整等级模型。一类和两类分类器对此进行了说明。线性判别分析可以用作软模型,并且使用合并方差-协方差矩阵的主成分分析作为联合模型和不相交模型之间的中间视图而引入,从而允许在这些简化秩模型上使用线性判别分析。通过选择最具区分性的PC,可以证明,减小的马氏距离比通过软模型进行区分的完整等级模型具有更高的性能。版权所有(c)2016 John Wiley&Sons,Ltd.

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