Feature selection in a kernel space

Published: Jun 20, 2007
Abstract
We address the problem of feature selection in a kernel space to select the most discriminative and informative features for classification and data analysis. This is a difficult problem because the dimension of a kernel space may be infinite. In the past, little work has been done on feature selection in a kernel space. To solve this problem, we derive a basis set in the kernel space as a first step for feature selection. Using the basis set,...
Paper Details
Title
Feature selection in a kernel space
Published Date
Jun 20, 2007
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