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首页> 外文期刊>Applied Soft Computing >Parameter determination of support vector machine and feature selection using simulated annealing approach
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Parameter determination of support vector machine and feature selection using simulated annealing approach

机译:支持向量机的参数确定和模拟退火算法的特征选择

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Support vector machine (SVM) is a novel pattern classification method that is valuable in many applications. Kernel parameter setting in the SVM training process, along with the feature selection, significantly affects classification accuracy. The objective of this study is to obtain the better parameter values while also finding a subset of features that does not degrade the SVM classification accuracy. This study develops a simulated annealing (SA) approach for parameter determination and feature selection in the SVM, termed SA-SVM. To measure the proposed SA-SVM approach, several datasets in UCI machine learning repository are adopted to calculate the classification accuracy rate. The proposed approach was compared with grid search which is a conventional method of performing parameter setting, and various other methods. Experimental results indicate that the classification accuracy rates of the proposed approach exceed those of grid search and other approaches. The SA-SVM is thus useful for parameter determination and feature selection in the SVM.
机译:支持向量机(SVM)是一种新颖的模式分类方法,在许多应用中都很有价值。 SVM训练过程中的内核参数设置以及功能选择会显着影响分类准确性。这项研究的目的是获得更好的参数值,同时找到不会降低SVM分类准确性的特征子集。这项研究开发了一种模拟退火(SA)方法,用于在SVM中确定参数和选择特征,称为SA-SVM。为了衡量所提出的SA-SVM方法,采用了UCI机器学习存储库中的几个数据集来计算分类准确率。将该提议的方法与网格搜索(该网格搜索是执行参数设置的常规方法)以及其他各种方法进行了比较。实验结果表明,该方法的分类准确率超过了网格搜索和其他方法。因此,SA-SVM可用于SVM中的参数确定和功能选择。

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