Learning the kernel matrix by maximizing a KFD-based class separability criterion

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摘要

The advantage of a kernel method often depends critically on a proper choice of the kernel function. A promising approach is to learn the kernel from data automatically. In this paper, we propose a novel method for learning the kernel matrix based on maximizing a class separability criterion that is similar to those used by linear discriminant analysis (LDA) and kernel Fisher discriminant (KFD). It is interesting to note that optimizing this criterion function does not require inverting the possibly singular within-class scatter matrix which is a computational problem encountered by many LDA and KFD methods. We have conducted experiments on both synthetic data and real-world data from UCI and FERET, showing that our method consistently outperforms some previous kernel learning methods.

论文关键词:Kernel learning,Fisher discriminant criterion,Kernel Fisher discriminant,Face recognition

论文评审过程:Received 22 December 2005, Revised 21 September 2006, Accepted 27 December 2006, Available online 23 January 2007.

论文官网地址:https://doi.org/10.1016/j.patcog.2006.12.031