The soft-margin Support Vector Machine with ordered weighted average

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摘要

This paper deals with a cost sensitive extension of the standard Support Vector Machine (SVM) using an ordered weighted sum of the deviations of misclassified individuals with respect to their corresponding supporting hyperplanes. In contrast with previous heuristic approaches, an exact method that applies the ordered weighted average operator in the classical SVM model is proposed. Specifically, when weights are sorted in non-decreasing order, a quadratic continuous formulation is developed. For general weights, a mixed integer quadratic formulation is proposed. In addition, our results prove that nonlinear kernel functions can be also applied to these new models extending its applicability beyond the linear case. Extensive computational results reported in the paper show that the predictive performance provided by the proposed exact solution approaches are better than the ones provided by the classical models (linear and nonlinear kernel) and similar or better than the previous ones provided by the heuristic solution by Maldonado et al. (2018).

论文关键词:Data science,Classification,Support Vector Machine,OWA operators,Mixed integer quadratic programming

论文评审过程:Received 4 June 2021, Revised 21 September 2021, Accepted 5 November 2021, Available online 19 November 2021, Version of Record 10 January 2022.

论文官网地址:https://doi.org/10.1016/j.knosys.2021.107705