Sparse Support Vector Machine with Lp Penalty for Feature Selection |
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Authors: | Lan Yao Feng Zeng Dong-Hui Li Zhi-Gang Chen |
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Affiliation: | 1.College of Mathematics and Econometrics,Hunan University,Changsha,China;2.School of Software,Central South University,Changsha,China;3.School of Mathematical Sciences,South China Normal University,Guangzhou,China |
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Abstract: | We study the strategies in feature selection with sparse support vector machine (SVM). Recently, the socalled L p -SVM (0 < p < 1) has attracted much attention because it can encourage better sparsity than the widely used L 1-SVM. However, L p -SVM is a non-convex and non-Lipschitz optimization problem. Solving this problem numerically is challenging. In this paper, we reformulate the L p -SVM into an optimization model with linear objective function and smooth constraints (LOSC-SVM) so that it can be solved by numerical methods for smooth constrained optimization. Our numerical experiments on artificial datasets show that LOSC-SVM (0 < p < 1) can improve the classification performance in both feature selection and classification by choosing a suitable parameter p. We also apply it to some real-life datasets and experimental results show that it is superior to L 1-SVM. |
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