广义Moore-Penrose伪逆的线性判别分析

Tomasz Górecki, Maciej Luczak
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引用次数: 20

摘要

线性判别分析(LDA)技术是分类中一个重要且发展良好的领域,迄今为止已经提出了许多线性(也包括非线性)判别方法。当特征的数量超过观测值的数量时,将LDA应用于实际数据的复杂性就会出现。在这种情况下,协方差估计没有完整的秩,因此不能被反转。有许多方法可以处理这个问题。在本文中,我们提出了一种改进LDA的方法,并提出了一种利用Moore-Penrose伪逆的泛化来消除这一缺点的新方法。我们的新方法,除了处理反协方差矩阵的问题外,还显著提高了分类的质量,也提高了我们可以反协方差矩阵的数据集的分类质量。在各种数据集上的实验结果表明,我们对LDA的改进是有效的,并且我们的方法优于LDA。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Linear discriminant analysis with a generalization of the Moore–Penrose pseudoinverse
The Linear Discriminant Analysis (LDA) technique is an important and well-developed area of classification, and to date many linear (and also nonlinear) discrimination methods have been put forward. A complication in applying LDA to real data occurs when the number of features exceeds that of observations. In this case, the covariance estimates do not have full rank, and thus cannot be inverted. There are a number of ways to deal with this problem. In this paper, we propose improving LDA in this area, and we present a new approach which uses a generalization of the Moore-Penrose pseudoinverse to remove this weakness. Our new approach, in addition to managing the problem of inverting the covariance matrix, significantly improves the quality of classification, also on data sets where we can invert the covariance matrix. Experimental results on various data sets demonstrate that our improvements to LDA are efficient and our approach outperforms LDA.
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