基于谱回归的高效核判别分析

Deng Cai, Xiaofei He, Jiawei Han
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引用次数: 146

摘要

线性判别分析(LDA)是一种常用的保持类可分性的特征提取方法。投影向量通常是通过最大化类间协方差,同时最小化类内协方差来获得的。LDA可以在原始输入空间中执行,也可以在将数据点映射到的再现核希尔伯特空间(RKHS)中执行,从而导致核判别分析(KDA)。当数据高度非线性分布时,KDA比LDA具有更好的性能。然而,在KDA中计算射影函数涉及到核矩阵的特征分解,当存在大量训练样本时,这是非常昂贵的。本文提出了一种新的核判别分析算法——谱回归核判别分析(SRKDA)。通过谱图分析,SRKDA将判别分析转换为回归框架,从而促进高效计算和正则化技术的使用。具体来说,SRKDA只需要解决一组正则化回归问题,不涉及特征向量计算,这大大节省了计算成本。我们的计算分析表明,SRKDA比普通KDA快27倍。此外,新的公式使得开发增量版本的算法非常容易,可以充分利用现有训练样本的计算结果。人脸识别实验证明了该算法的有效性和高效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Kernel Discriminant Analysis via Spectral Regression
Linear discriminant analysis (LDA) has been a popular method for extracting features which preserve class separability. The projection vectors are commonly obtained by maximizing the between class covariance and simultaneously minimizing the within class covariance. LDA can be performed either in the original input space or in the reproducing kernel Hilbert space (RKHS) into which data points are mapped, which leads to Kernel Discriminant Analysis (KDA). When the data are highly nonlinear distributed, KDA can achieve better performance than LDA. However, computing the projective functions in KDA involves eigen-decomposition of kernel matrix, which is very expensive when a large number of training samples exist. In this paper, we present a new algorithm for kernel discriminant analysis, called spectral regression kernel discriminant analysis (SRKDA). By using spectral graph analysis, SRKDA casts discriminant analysis into a regression framework which facilitates both efficient computation and the use of regularization techniques. Specifically, SRKDA only needs to solve a set of regularized regression problems and there is no eigenvector computation involved, which is a huge save of computational cost. Our computational analysis shows that SRKDA is 27 times faster than the ordinary KDA. Moreover, the new formulation makes it very easy to develop incremental version of the algorithm which can fully utilize the computational results of the existing training samples. Experiments on face recognition demonstrate the effectiveness and efficiency of the proposed algorithm.
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