基于四分之一罚函数的平滑支持向量机

M. Jiang, Z. Meng, Gengui Zhou
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引用次数: 8

摘要

寻找一种平滑支持向量机是十分重要的。本文研究了一种基于四分之一罚函数的平滑支持向量机。介绍了支持向量机的优化问题,并提出了一个基于四分之一罚函数的非应变非光滑优化问题。然后,我们定义了一个一阶可微函数来近似光滑惩罚函数,得到了一个无约束的光滑优化问题。通过误差分析,我们可以通过求解支持向量机的无约束近似光滑惩罚优化问题得到支持向量机的近似解。数值实验表明,所提出的平滑支持向量机是有效的。
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A Smoothing Support Vector Machine Based on Quarter Penalty Function
It is very important to find out a smoothing support vec- tor machine. This paper studies a smoothing support vec- tor machine (SVM) by using quarter penalty function. We introduce the optimization problem of SVM with an uncon- strained and nonsmooth optimization problem via quarter penalty function. Then, we define a one-order differentiable function to approximately smooth the penalty function, and get an unconstrained and smooth optimization problem. By error analysis, we may obtain approximate solution of SVM by solving its approximately smooth penalty optimization problem without constraints. The numerical experiment shows that our smoothing SVM is efficient.
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