DocumentCode
1218076
Title
Building Sparse Multiple-Kernel SVM Classifiers
Author
Hu, Mingqing ; Chen, Yiqiang ; Kwok, James Tin-Yau
Author_Institution
Inst. of Comput. Technol., Chinese Acad. of Sci., Beijing
Volume
20
Issue
5
fYear
2009
fDate
5/1/2009 12:00:00 AM
Firstpage
827
Lastpage
839
Abstract
The support vector machines (SVMs) have been very successful in many machine learning problems. However, they can be slow during testing because of the possibly large number of support vectors obtained. Recently, Wu (2005) proposed a sparse formulation that restricts the SVM to use a small number of expansion vectors. In this paper, we further extend this idea by integrating with techniques from multiple-kernel learning (MKL). The kernel function in this sparse SVM formulation no longer needs to be fixed but can be automatically learned as a linear combination of kernels. Two formulations of such sparse multiple-kernel classifiers are proposed. The first one is based on a convex combination of the given base kernels, while the second one uses a convex combination of the so-called ldquoequivalentrdquo kernels. Empirically, the second formulation is particularly competitive. Experiments on a large number of toy and real-world data sets show that the resultant classifier is compact and accurate, and can also be easily trained by simply alternating linear program and standard SVM solver.
Keywords
learning (artificial intelligence); linear programming; pattern classification; support vector machines; linear program; machine learning; multiple-kernel learning; sparse multiple-kernel SVM classifiers; support vector machines; Gradient projection; kernel methods; multiple-kernel learning (MKL); sparsity; support vector machine (SVM);
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/TNN.2009.2014229
Filename
4808176
Link To Document