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Large Margin Proximal Non-parallel Support Vector Classifiers

Release Time:2019-10-23  Hits:

Indexed by: Conference Paper

Date of Publication: 2018-01-01

Included Journals: CPCI-S

Volume: 10862

Page Number: 715-721

Key Words: Support vector machine; Non-parallel SVM; Structural risk minimization principle; Dual coordinate descend algorithm

Abstract: In this paper, we propose a novel large margin proximal non-parallel twin support vector machine for binary classification. The significant advantages over twin support vector machine are that the structural risk minimization principle is implemented and by adopting uncommon constraint formulation for the primal problem, the proposed method avoids the computation of the large inverse matrices before training which is inevitable in the formulation of twin support vector machine. In addition, the dual coordinate descend algorithm is used to solve the optimization problems to accelerate the training efficiency. Experimental results exhibit the effectiveness and the classification accuracy of the proposed method.

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