一种基于高斯径向基函数的特征选择算法

Zhiliang Liu, M. Zuo, Hongbing Xu
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引用次数: 13

摘要

最近Li等人提出了一种支持向量机(SVM)中高斯径向基函数(GRBF)的参数选择方法。本文基于GRBF核函数的性质计算了两个向量之间的余弦相似度。Li的方法可以确定支持向量机的最优sigma,从而有效地提高了支持向量机的性能,但它只关注一个固定的原始特征空间,如果空间中包含一些不相关和冗余的特征,特别是在高维特征空间中,可能会受到影响。本文将Li的方法扩展到一个灵活的特征空间,使特征选择和参数选择同时进行。通过最小化考虑类内和类间余弦相似度的目标函数来确定特征子集和sigma。实验结果表明,该方法在分类精度上优于Li的方法和传统的SVM。
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A Gaussian radial basis function based feature selection algorithm
Recently Li et al. proposed a parameter selection method for Gaussian radial basis function (GRBF) in support vector machine (SVM). In his paper cosine similarity was calculated between two vectors based on the properties of GRBF kernel function. Li's method can determine an optimal sigma in SVM and thus efficiently improve its performance, yet it is limited by only focusing on a fixed original feature space and may suffer if the space contains some irrelevant and redundant features, especially in a high-dimensional feature space. In this paper, Li's method is extended to a flexible feature space so that feature selection and parameter selection are conducted at the same time. A feature subset and sigma are determined by minimizing the objective function that considers both within-class and between-class cosine similarities. Our experimental results demonstrate that the proposed method has a better performance than Li's method and traditional SVM in terms of classification accuracy.
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