Optimal kernel selection in Kernel Fisher discriminant analysis

Seung-Jean Kim, A. Magnani, Stephen P. Boyd
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引用次数: 165

Abstract

In Kernel Fisher discriminant analysis (KFDA), we carry out Fisher linear discriminant analysis in a high dimensional feature space defined implicitly by a kernel. The performance of KFDA depends on the choice of the kernel; in this paper, we consider the problem of finding the optimal kernel, over a given convex set of kernels. We show that this optimal kernel selection problem can be reformulated as a tractable convex optimization problem which interior-point methods can solve globally and efficiently. The kernel selection method is demonstrated with some UCI machine learning benchmark examples.
核Fisher判别分析中的最优核选择
在Kernel Fisher判别分析(KFDA)中,我们在由Kernel隐式定义的高维特征空间中进行Fisher线性判别分析。KFDA的性能取决于内核的选择;在本文中,我们考虑在给定核的凸集上寻找最优核的问题。我们证明了这种最优核选择问题可以重新表述为一个可处理的凸优化问题,内点方法可以全局有效地求解。通过一些UCI机器学习的基准示例对核选择方法进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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