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Choosing the kernel parameters for support vector machines by the inter-cluster distance in the feature space

机译:通过特征空间中的簇间距离为支持向量机选择内核参数

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摘要

Determining the kernel and error penalty parameters for support vector machines (SVMs) is very problem-dependent in practice. A popular method to deciding the kernel parameters is the grid search method. In the training process, classifiers are trained with different kernel parameters, and only one of the classifiers is required for the testing process. This makes the training process time-consuming. In this paper we propose using the inter-cluster distances in the feature spaces to choose the kernel parameters. Calculating such distance costs much less computation time than training the corresponding SVM classifiers; thus the proper kernel parameters can be chosen much faster. Experiment results show that the inter-cluster distance can choose proper kernel parameters with which the testing accuracy of trained SVMs is competitive to the standard ones, and the training time can be significantly shortened.
机译:在实践中,确定支持向量机(SVM)的内核和错误惩罚参数非常依赖于问题。决定内核参数的一种流行方法是网格搜索法。在训练过程中,使用不同的内核参数训练分类器,并且测试过程仅需要一个分类器。这使得训练过程很耗时。在本文中,我们建议使用特征空间中的簇间距离来选择内核参数。与训练相应的SVM分类器相比,计算这种距离花费的计算时间少得多;因此可以更快地选择适当的内核参数。实验结果表明,集群间距离可以选择合适的核参数,训练后的支持向量机的测试精度可与标准核参数相媲美,并且可以大大缩短训练时间。

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