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Robust Linear Discriminant Analysis | Science Publications

机译:稳健的线性判别分析科学出版物

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> >Linear Discriminant Analysis (LDA) is the most commonly employed method for classification. This method which creates a linear discriminant function yields optimal classification rule between two or more groups under the assumptions of normality and homoscedasticity (equal covariance matrices). However, the calculation of parametric LDA highly relies on the sample mean vectors and pooled sample covariance matrix which are sensitive to non-normality. To overcome the sensitivity of this method towards non-normality as well as homoscedasticity, this study proposes two new robust LDA models. In these models, an automatic trimmed mean and its corresponding winsorized mean are employed to replace the mean vector in the parametric LDA. Meanwhile, for the covariance matrix, this study introduces two robust approaches namely the winsorization and the multiplication of Spearman's rho with the corresponding robust scale estimator used in the trimming process. Simulated and real financial data are used to test the performance of the proposed methods in terms of misclassification rate. The numerical result shows that the new method performs better if compared to the parametric LDA and the robust LDA with S-estimator. Thus, these new models can be recommended as alternatives to the parametric LDA when non-normality and heteroscedasticity (unequal covariance matrices) exist.
机译: > >线性判别分析(LDA)是最常用的分类方法。这种创建线性判别函数的方法会在正态性和均方差性(相等协方差矩阵)的假设下,在两个或多个组之间产生最佳分类规则。但是,参数LDA的计算高度依赖于对非正态性敏感的样本均值矢量和合并样本协方差矩阵。为了克服该方法对非正态性和均方差性的敏感性,本研究提出了两个新的鲁棒LDA模型。在这些模型中,采用自动修整均值及其相应的Winsorized均值来代替参数LDA中的均值向量。同时,对于协方差矩阵,本研究介绍了两种鲁棒方法,即Winsorization和Spearman rho与微调过程中使用的相应鲁棒比例估计器的相乘。模拟和真实的财务数据用于测试错误分类率下所提出方法的性能。数值结果表明,与参数LDA和带S估计器的鲁棒LDA相比,该新方法性能更好。因此,当存在非正态性和异方差性(不等协方差矩阵)时,可以将这些新模型推荐为参数LDA的替代方案。

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