Feature selection algorithms to reduce processing time in classification with SVMs

D. C. Toledo-Pérez, J. Rodríguez-Reséndíz, R. Gómez-Loenzo, J. Martínez-Trinidad, J. A. Carrasco-Ochoa
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Abstract

By applying feature selection algorithms, such as the Relief and the Sparse Multinomial Logistic Regression with Bayesian regularization (SBMLR) to a feature set, a smaller subset of features can be obtained. Considering only those selected for all or most of the test subjects; this shows that the Mean Absolute Value (MAV) of the signal provides less information than the rest of the features that were selected. The proposed method was applied to the classification of myoelectric signals of the transtibial section, using Support Vector Machines (SVM) as a classifier.
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减少svm分类处理时间的特征选择算法
将特征选择算法(如Relief和稀疏多项式逻辑回归与贝叶斯正则化(SBMLR))应用于特征集,可以获得更小的特征子集。只考虑全部或大部分考试科目的选择;这表明信号的平均绝对值(MAV)提供的信息比选择的其他特征少。采用支持向量机(SVM)作为分类器,将该方法应用于胫骨肌电信号的分类。
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