Radial Basis Function Kernel Parameter Optimization Algorithm in Support Vector Machine Based on Segmented Dichotomy

Haochen Shi, Haipeng Xiao, Jianjiang Zhou, Ning Li, Huiyu Zhou
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引用次数: 10

Abstract

By analyzing the influences of kernel parameter and penalty factor for generalization performance on Support Vector Machine (SVM), a novel parameter optimization algorithm based on segmented dichotomy is proposed for Radial Basis Function (RBF) kernel. Combine with Segmented Dichotomy(SD) and Gird Searching(GS) method, a composite parameter selection, SD-GS algorithm, is structured for rapid optimization of kernel parameter and penalty factor. UCI Machine Learning database is used to test our proposed method. Experimental results have shown that performance on parameter selection is better than traversal exponential grid searching. Thus, the optimized parameter combination of SD-GS algorithm enables RBF kernel in SVM to have higher generalization performance.
基于分段二分类的支持向量机径向基函数核参数优化算法
通过分析核参数和惩罚因子对支持向量机(SVM)泛化性能的影响,提出了一种基于分段二分类的径向基函数(RBF)核参数优化算法。结合分段二分法(SD)和网格搜索法(GS),构造了一种复合参数选择算法SD-GS,用于快速优化核参数和惩罚因子。使用UCI机器学习数据库来测试我们提出的方法。实验结果表明,参数选择性能优于遍历指数网格搜索。因此,优化后的SD-GS算法参数组合使得SVM中的RBF核具有更高的泛化性能。
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