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Comparative Performance of Classical Fisher Linear Discriminant Analysis and Robust Fisher Linear Discriminant Analysis

机译:经典Fisher线性判别分析与鲁棒Fisher Fisher线性判别分析的比较性能

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Linear discriminant analysis for multiple groups can be performed using Fisher's technique which can be applied to classify and predict observations into various populations. Classical Fisher linear discriminant analysis (FLDA) is highly susceptible to outliers. The poor performance of classical FLDA is due to lack of robustness of the classical estimators used to train the model. The proposed robust FLDA combine the features of classical FLDA and weighted sample observations. This paper examines the comparative classification performance of Fisher linear discriminant analysis and the proposed robust Fisher linear discriminant analysis. The paper focuses on the influence scaled normal and unscaled normal data set have on the classical Fisher and the robust Fisher techniques. The objectives of this paper are to compare the classification performance of these methods based on the mean of correct classification and to examine the separation between the group means. The classification results indicate that the proposed procedure has improved classification rate compared to the classical Fisher linear classification analysis. The simulation showed that both procedures have comparable separation capability.Keywords: Fisher Linear Discriminant Analysis; Classification; Hit-Ratio; Robust. 2010 Mathematics Subject Classification: 62H99; 62M20
机译:可以使用Fisher技术对多个组进行线性判别分析,该技术可用于对各种人群进行分类和预测。经典的Fisher线性判别分析(FLDA)非常容易受到异常值的影响。经典FLDA的性能较差是由于缺乏用于训练模型的经典估算器的鲁棒性。所提出的鲁棒FLDA结合了经典FLDA和加权样本观测的特征。本文研究了Fisher线性判别分析的比较分类性能和提出的鲁棒Fisher线性判别分析。本文着重讨论了缩放的正态和非缩放的正态数据集对经典Fisher和鲁棒Fisher技术的影响。本文的目的是比较基于正确分类均值的这些方法的分类性能,并研究组均值之间的分离。分类结果表明,与经典的Fisher线性分类分析相比,该方法具有更高的分类率。仿真表明,这两种方法具有相当的分离能力。分类;命中率强大的。 2010数学学科分类:62H99; 62M20

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