Gaussian kernel optimization for pattern classification

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摘要

This paper presents a novel algorithm to optimize the Gaussian kernel for pattern classification tasks, where it is desirable to have well-separated samples in the kernel feature space. We propose to optimize the Gaussian kernel parameters by maximizing a classical class separability criterion, and the problem is solved through a quasi-Newton algorithm by making use of a recently proposed decomposition of the objective criterion. The proposed method is evaluated on five data sets with two kernel-based learning algorithms. The experimental results indicate that it achieves the best overall classification performance, compared with three competing solutions. In particular, the proposed method provides a valuable kernel optimization solution in the severe small sample size scenario.

论文关键词:Gaussian kernel,Kernel optimization,Pattern classification,Small sample size

论文评审过程:Received 6 January 2008, Revised 1 October 2008, Accepted 23 November 2008, Available online 6 December 2008.

论文官网地址:https://doi.org/10.1016/j.patcog.2008.11.024