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A Novel Smooth Support Vector Machines for Classification and Regression

机译:一种用于分类和回归的新型光滑支持向量机

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摘要

Novel smoothing function method for Support Vector Classification (SVC) and Support Vector Regression (SVR) are proposed and attempt to overcome some drawbacks of former method which are complex, subtle, and sometimes difficult to implement. First, used Karush–Kuhn–Tucker complementary condition in optimization theory, unconstrained nondifferentiable optimization model is built. Then the smooth approximation algorithm basing on differentiable function is given. Finally, the paper trains the data sets with standard unconstraint optimization method. This algorithm is fast and insensitive to initial point. Theory analysis and numerical results illustrate that smoothing function method for SVMs are feasible and effective.
机译:提出了一种新的用于支持向量分类(SVC)和支持向量回归(SVR)的平滑函数方法,并试图克服前一种方法复杂,微妙,有时难以实现的缺点。首先,在优化理论中使用Karush–Kuhn–Tucker互补条件,建立了无约束不可微优化模型。然后给出了基于微分函数的平滑逼近算法。最后,本文采用标准无约束优化方法训练数据集。该算法快速且对初始点不敏感。理论分析和数值结果表明,支持向量机的平滑函数方法是可行和有效的。

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