Robust twin support vector machine for pattern classification

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In this paper, we proposed a new robust twin support vector machine (called R-TWSVM) via second order cone programming formulations for classification, which can deal with data with measurement noise efficiently. Preliminary experiments confirm the robustness of the proposed method and its superiority to the traditional robust SVM in both computation time and classification accuracy. Remarkably, since there are only inner products about inputs in our dual problems, this makes us apply kernel trick directly for nonlinear cases. Simultaneously we does not need to solve the extra inverse of matrices, which is totally different with existing TWSVMs. In addition, we also show that the TWSVMs are the special case of our robust model and simultaneously give a new dual form of TWSVM by degenerating R-TWSVM, which successfully overcomes the existing shortcomings of TWSVM.

论文关键词:Classification,Twin support vector machine,Second order cone programming,Robust

论文评审过程:Received 27 December 2011, Revised 22 June 2012, Accepted 27 June 2012, Available online 4 July 2012.

论文官网地址:https://doi.org/10.1016/j.patcog.2012.06.019