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A Novel Indefinite Kernel Dimensionality Reduction Algorithm: Weighted Generalized Indefinite Kernel Discriminant Analysis

机译:一种新的不定核降维算法:加权广义不定核判别分析

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摘要

Kernel methods are becoming increasingly popular for many real-world learning problems. And these methods for data analysis are frequently considered to be restricted to positive definite kernels. In practice, however, indefinite kernels arise and demand application in pattern analysis. In this paper, we present several formal extensions of kernel discriminant analysis (KDA) methods which can be used with indefinite kernels. In particular they include indefinite KDA (IKDA) based on generalized singular value decomposition (IKDA/GSVD), pseudo-inverse IKDA, null space IKDA and range space IKDA. Similar to the case of LDA-based algorithms, IKDA-based algorithms also fail to consider that different contribution of each pair of class to the discrimination. To remedy this problem, weighted schemes are incorporated into IKDA extensions in this paper and called them weighted generalized IKDA algorithms. Experiments on two real-world data sets are performed to test and evaluate the effectiveness of the proposed algorithms and the effect of weights on indefinite kernel functions. The results show that the effect of weighted schemes is very significantly.
机译:对于许多现实世界中的学习问题,内核方法正变得越来越流行。这些数据分析方法通常被认为仅限于正定核。但是,实际上,会出现不确定的内核,因此需要在模式分析中应用。在本文中,我们介绍了可用于不确定内核的内核判别分析(KDA)方法的几种形式扩展。特别是,它们包括基于广义奇异值分解(IKDA / GSVD)的不确定KDA(IKDA),伪逆IKDA,空空间IKDA和范围空间IKDA。与基于LDA的算法相似,基于IKDA的算法也没有考虑每对类别对区分的不同贡献。为了解决此问题,本文将加权方案合并到IKDA扩展中,并将其称为加权广义IKDA算法。对两个真实世界的数据集进行了实验,以测试和评估所提出算法的有效性以及权重对不确定内核函数的影响。结果表明,加权方案的效果非常显着。

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