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Input feature and kernel selection for support vector machine classification

机译:支持向量机分类的输入特征和内核选择

摘要

A feature selection technique for support vector machine (SVM) classification makes use of fast Newton method that suppresses input space features for a linear programming formulation of a linear SVM classifier, or suppresses kernel functions for a linear programming formulation of a nonlinear SVM classifier. The techniques may be implemented with a linear equation solver, without the need for specialized linear programming packages. The feature selection technique may be applicable to linear or nonlinear SVM classifiers. The technique may involve defining a linear programming formulation of a SVM classifier, solving an exterior penalty function of a dual of the linear programming formulation to produce a solution to the SVM classifier using a Newton method, and selecting an input set for the SVM classifier based on the solution.
机译:支持向量机(SVM)分类的特征选择技术利用快速牛顿法,该方法抑制线性SVM分类器的线性规划公式的输入空间特征,或抑制非线性SVM分类器的线性规划公式的核函数。可以使用线性方程求解器来实现该技术,而无需专门的线性编程程序包。特征选择技术可以适用于线性或非线性SVM分类器。该技术可能涉及定义SVM分类器的线性编程公式,求解线性规划公式的对偶的外部罚函数以使用牛顿法生成SVM分类器的解决方案以及为基于SVM分类器的输入选择输入集在解决方案上。

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