一般平均散度分析

D. Tao, Xuelong Li, Xindong Wu, S. Maybank
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引用次数: 67

摘要

子空间选择是数据挖掘中的一个强大工具。一种重要的子空间方法是Fisher-Rao线性判别分析(LDA),它已成功地应用于生物识别、生物信息学和多媒体检索等许多领域。然而,LDA有一个关键的缺点:对子空间的投影倾向于合并原始特征空间中靠近的那些类。如果分离的类从高斯分布中采样,所有类都具有相同的协方差矩阵,则LDA最大化不同类之间的Kullback-Leibler (KL)散度的平均值。通过将KL散度推广到Bregman散度,将算术均值推广到一般均值,得到了一种选择子空间的框架。该框架被命名为一般平均发散分析(GADA)。在此GADA框架下,研究了一种基于几何均值的几何均值发散分析方法。基于合成数据的大量实验表明,我们的方法明显优于LDA和几种具有代表性的LDA扩展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
General Averaged Divergence Analysis
Subspace selection is a powerful tool in data mining. An important subspace method is the Fisher-Rao linear discriminant analysis (LDA), which has been successfully applied in many fields such as biometrics, bioinformatics, and multimedia retrieval. However, LDA has a critical drawback: the projection to a subspace tends to merge those classes that are close together in the original feature space. If the separated classes are sampled from Gaussian distributions, all with identical covariance matrices, then LDA maximizes the mean value of the Kullback-Leibler (KL) divergences between the different classes. We generalize this point of view to obtain a framework for choosing a subspace by 1) generalizing the KL divergence to the Bregman divergence and 2) generalizing the arithmetic mean to a general mean. The framework is named the general averaged divergence analysis (GADA). Under this GADA framework, a geometric mean divergence analysis (GMDA) method based on the geometric mean is studied. A large number of experiments based on synthetic data show that our method significantly outperforms LDA and several representative LDA extensions.
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