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On the Performance of Chernoff-Distance-Based Linear Dimensionality Reduction Techniques

机译:基于Chernoff-距离的线性维度减少技术的性能

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摘要

We present a performance analysis of three linear dimensionality reduction techniques: Fisher’s discriminant analysis (FDA), and two methods introduced recently based on the Chernoff distance between two distributions, the Loog and Duin (LD) method, which aims to maximize a criterion derived from the Chernoff distance in the original space, and the one introduced by Rueda and Herrera (RH), which aims to maximize the Chernoff distance in the transformed space. A comprehensive performance analysis of these methods combined with two well-known classifiers, linear and quadratic, on synthetic and real-life data shows that LD and RH outperform FDA, specially in the quadratic classifier, which is strongly related to the Chernoff distance in the transformed space. In the case of the linear classifier, the superiority of RH over the other two methods is also demonstrated.
机译:我们展示了三种线性维度减少技术的性能分析:Fisher的判别分析(FDA)以及最近引入的两种方法,基于两个分布,LOOG和DUIN(LD)方法之间的CHERNOFF距离,旨在最大限度地提高来自的标准原始空间中的Chernoff距离以及Rueda和Herrera(RH)引入的距离,旨在最大限度地提高变换空间中的击球距离。这些方法的综合性能分析与两种公知的分类器,线性和二次,对合成和现实生活数据相结合,显示了LD和RH优异的FDA,特别是在二次分类器中,这与Chernoff距离强烈相关变形空间。在线性分级器的情况下,还证明了RH上RH的优越性。

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