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A Fast Parameters Selection Method of Support Vector Machine Based on Coarse Grid Search and Pattern Search

机译:基于粗网格搜索和模式搜索的支持向量机快速参数选择方法

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摘要

Parameters selection of support vector machine (SVM) is a key problem in the application of SVM, which has influence on generalization performance of SVM. The commonly used method, grid search (GS), is time-consuming especially for very large dataset. By using coarse grid search and pattern search (PS) to select kernel parameters and penalty factor, a fast method of parameters selection of SVM based on hybrid optimization strategy is proposed in this paper. The proposed method adequately combines the advantages of GS and PS. The experiment results demonstrate that this proposed method can not only improve accuracy and generalization performance of SVM, but also save much more time.
机译:支持向量机(SVM)的参数选择是SVM应用中的关键问题,它影响着SVM的泛化性能。常用的网格搜索(GS)方法非常耗时,特别是对于非常大的数据集。通过使用粗糙网格搜索和模式搜索(PS)选择核参数和惩罚因子,提出了一种基于混合优化策略的支持向量机参数选择的快速方法。所提出的方法充分结合了GS和PS的优点。实验结果表明,该方法不仅可以提高SVM的精度和泛化性能,而且可以节省更多时间。

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