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EFFECTS OF SVM PARAMETER OPTIMIZATION BASED ON THE PARAMETER DESIGN OF TAGUCHI METHOD

机译:基于Taguchi方法参数设计的SVM参数优化效果

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Support Vector Machines (SVMs) are based on the concept of decision planes that define decision boundaries, and Least Squares Support Vector (LS-SVM) Machine is the reformulation of the principles of SVM. In this study a diagnosis on a BUPA liver disorders dataset, is conducted LSSVM with the Taguchi method. The BUPA Liver Disorders dataset includes 345 samples with 6 features and 2 class labels. The system approach has two stages. In the first stage, in order to effectively determine the parameters of the kernel function, the Taguchi method is used to obtain better parameter settings. In the second stage, diagnosis of the BUPA liver disorders dataset is conducted using the LS-SVM classifier; the classification accuracy is 95.07%; the AROC is 99.12%. Compared with the results of related research, our proposed system is both effective and reliable.
机译:支持向量机(SVM)基于定义决策边界的决策平面的概念,最小二乘支持向量机(LS-SVM)机器是SVM原理的重新表述。在这项研究中,使用Taguchi方法对BUPA肝脏疾病数据集进行了LSSVM诊断。 BUPA肝脏疾病数据集包括345个具有6个特征和2个类别标签的样本。系统方法分为两个阶段。在第一阶段,为了有效地确定内核函数的参数,使用Taguchi方法获得更好的参数设置。在第二阶段,使用LS-SVM分类器对BUPA肝脏疾病数据集进行诊断;分类精度为95.07%; AROC为99.12%。与相关研究结果相比,我们提出的系统既有效又可靠。

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