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SVM-RFE Based Feature Selection and Taguchi Parameters Optimization for Multiclass SVM Classifier

机译:基于SVM-RFE的多类SVM分类器特征选择和田口参数优化

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摘要

Recently, support vector machine (SVM) has excellent performance on classification and prediction and is widely used on disease diagnosis or medical assistance. However, SVM only functions well on two-group classification problems. This study combines feature selection and SVM recursive feature elimination (SVM-RFE) to investigate the classification accuracy of multiclass problems for Dermatology and Zoo databases. Dermatology dataset contains 33 feature variables, 1 class variable, and 366 testing instances; and the Zoo dataset contains 16 feature variables, 1 class variable, and 101 testing instances. The feature variables in the two datasets were sorted in descending order by explanatory power, and different feature sets were selected by SVM-RFE to explore classification accuracy. Meanwhile, Taguchi method was jointly combined with SVM classifier in order to optimize parameters C and γ to increase classification accuracy for multiclass classification. The experimental results show that the classification accuracy can be more than 95% after SVM-RFE feature selection and Taguchi parameter optimization for Dermatology and Zoo databases.
机译:最近,支持向量机(SVM)在分类和预测方面具有出色的性能,并广泛用于疾病诊断或医疗救助。但是,SVM仅对两类分类问题起作用。这项研究结合了特征选择和SVM递归特征消除(SVM-RFE),以研究皮肤科和Zoo数据库的多类问题的分类准确性。皮肤病学数据集包含33个特征变量,1个类变量和366个测试实例; Zoo数据集包含16个特征变量,1个类变量和101个测试实例。两个数据集中的特征变量通过解释能力按降序排序,然后通过SVM-RFE选择不同的特征集以探索分类准确性。同时,Taguchi方法与SVM分类器结合使用,以优化参数C和γ,以提高分类精度。实验结果表明,对皮肤病学和动物园数据库进行SVM-RFE特征选择和Taguchi参数优化后,分类准确率可以达到95%以上。

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