Title :
Feature Selection with Kernel Class Separability
Author_Institution :
Res. Sch. of Inf. Sci. & Eng., Australian Nat. Univ., Canberra, ACT
Abstract :
Classification can often benefit from efficient feature selection. However, the presence of linearly nonseparable data, quick response requirement, small sample problem and noisy features makes the feature selection quite challenging. In this work, a class separability criterion is developed in a high-dimensional kernel space, and feature selection is performed by the maximization of this criterion. To make this feature selection approach work, the issues of automatic kernel parameter tuning, the numerical stability, and the regularization for multi-parameter optimization are addressed. Theoretical analysis uncovers the relationship of this criterion to the radius-margin bound of the SVMs, the KFDA, and the kernel alignment criterion, providing more insight on using this criterion for feature selection. This criterion is applied to a variety of selection modes with different search strategies. Extensive experimental study demonstrates its efficiency in delivering fast and robust feature selection.
Keywords :
numerical stability; pattern classification; statistical analysis; support vector machines; feature selection; high-dimensional kernel space; kernel class separability; kernel fisher discriminant analysis; multiparameter optimization; numerical stability; support vector machine; Application software; Feature extraction; Kernel; Numerical stability; Parameter estimation; Pattern analysis; Pattern classification; Robustness; Support vector machine classification; Support vector machines; Feature evaluation and selection; Pattern analysis; Algorithms; Artificial Intelligence; Image Enhancement; Image Interpretation, Computer-Assisted; Pattern Recognition, Automated;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2007.70799