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(Neural Computation. 2006;18:961-978.)
© 2006 The MIT Press


Letter

Feature Scaling for Kernel Fisher Discriminant Analysis Using Leave-One-Out Cross Validation

Liefeng Bo

blf0218{at}163.com

Ling Wang

wliiip{at}163.com

Licheng Jiao

lchjiao{at}mail.xidian.edu.cn Institute of Intelligent Information Processing, Xidian University, Xi'an 710071, China

Kernel fisher discriminant analysis (KFD) is a successful approach to classification. It is well known that the key challenge in KFD lies in the selection of free parameters such as kernel parameters and regularization parameters. Here we focus on the feature-scaling kernel where each feature individually associates with a scaling factor. A novel algorithm, named FS-KFD, is developed to tune the scaling factors and regularization parameters for the feature-scaling kernel. The proposed algorithm is based on optimizing the smooth leave-one-out error via a gradient-descent method and has been demonstrated to be computationally feasible. FS-KFD is motivated by the following two fundamental facts: the leave-one-out error of KFD can be expressed in closed form and the step function can be approximated by a sigmoid function. Empirical comparisons on artificial and benchmark data sets suggest that FS-KFD improves KFD in terms of classification accuracy.







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Copyright © 2006 by The MIT Press.