Journal ArticleUnknown
SVM Training: Second-Order Cone Programming versus Quadratic Programming
Authors
Author Affiliations
Khulna University, University of Electro-Communications
Published InThe 2006 IEEE International Joint Conference on Neural Network Proceedings
Year2006
Citations11
Abstract
The support vector machine (SVM) problem is a convex quadratic programming problem which scales with the training data size. If the training size is large, the problem cannot be solved by straighforward methods. The large-scale SVM problems are tackled by applying chunking (decomposition) technique. The quadratic programming problem involves a square matrix which is called kernel matrix is positive semi-definite. That is, the rank of the kernel matrix is less than or equal to its size. In this paper we discuss a method that can exploit the low-rank of the kernel matrix, and an interior-point method (IPM) is efficiently applied to the global (large-sized) problem. The method is based on the technique of second-order cone programming (SOCP). This method reformulates…
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