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Multiobjective Multiclass Soft-Margin Support Vector Machine and Its Solving Technique Based on Benson's Method

机译:基于Benson方法的多目标多塑料软质裕度支持向量机及其解决技术

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In this paper, we focus on the all together model, which is one of the support vector machine (SVM) using a piece-wise linear function for multiclass classification. We already proposed a multiobjective hard-margin SVM model as a new all together model for piecewise linearly separable data, which maximizes all of the geometric margins simultaneously for the generalization ability. In addition, we derived a single-objective convex problem and showed that a Pareto optimal solution for the proposed multiobjective SVM is obtained by solving single-objective problems. However, in the real-world classification problem the data are often piecewise linearly inseparable. Therefore, in this paper we extend the hard-margin SVM for the data by using penalty functions for the margin slack variables between outliers and the corresponding discriminant hyperplane. Those functions are incorporated into the objective functions. Moreover, we derive a single-objective second-order cone programming (SOCP) problem based on Benson's method and some techniques, and show that a Pareto optimal solution for the proposed soft-margin SVM is obtained by solving the SOCP iteratively. Furthermore through numerical experiments we verify that the proposed iterative method maximizes the geometric margins and constructs a classifier with a high generalization ability.
机译:在本文中,我们专注于所有一起的模型,它是支持传染媒介机(SVM)之一,用于多字母分类。我们已经提出了一个多目标硬质量SVM模型,作为分段线性可分离数据的新型模型,其同时为泛化能力最大化所有几何边缘。此外,我们通过解决单个客观问题来获得单个客观凸面问题,并显示了所提出的多目标SVM的Pareto最佳解决方案。然而,在真实的分类问题中,数据通常是分段线性不可分割的。因此,在本文中,我们通过使用异常值与相应判别超平面之间的边缘松弛变量来扩展数据的硬质裕度SVM。这些功能被纳入目标职能。此外,我们基于Benson的方法和一些技术获得了单一目标二阶锥形编程(SOCP)问题,并表明通过迭代地解决SOCP来获得所提出的软余量SVM的Pareto最佳解决方案。此外,通过数值实验,我们验证了所提出的迭代方法最大化几何边缘,并构建具有高概括能力的分类器。

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