核不相关和正交判别分析:一种统一的方法

T. Xiong, Jieping Ye, V. Cherkassky
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引用次数: 15

摘要

最近提出了几种用于非线性判别分析的核算法。然而,这些方法主要解决高维特征空间中的奇异性问题。对于在降维空间中得到的判别向量和特征向量的性质关注较少。本文给出了核判别分析的一个新公式。作为特殊情况,提出的公式包括核不相关判别分析(KUDA)和核正交判别分析(KODA)。KODA的特征向量是不相关的,而KODA的判别向量在特征空间中是相互正交的。我们提出了KUDA和KODA算法的理论推导。实验结果表明,与其他非线性判别算法相比,KUDA和KODA在分类精度方面都具有很强的竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kernel Uncorrelated and Orthogonal Discriminant Analysis: A Unified Approach
Several kernel algorithms have recently been proposed for nonlinear discriminant analysis. However, these methods mainly address the singularity problem in the high dimensional feature space. Less attention has been focused on the properties of the resulting discriminant vectors and feature vectors in the reduced dimensional space. In this paper, we present a new formulation for kernel discriminant analysis. The proposed formulation includes, as special cases, kernel uncorrelated discriminant analysis (KUDA) and kernel orthogonal discriminant analysis (KODA). The feature vectors of KUDA are uncorrelated, while the discriminant vectors of KODA are orthogonal to each other in the feature space. We present theoretical derivations of proposed KUDA and KODA algorithms. The experimental results show that both KUDA and KODA are very competitive in comparison with other nonlinear discriminant algorithms in terms of classification accuracy.
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