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Support vector-based feature selection using Fisher's linear discriminant and Support Vector Machine

机译:使用Fisher线性判别和支持向量机的基于支持向量的特征选择

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摘要

The problem of feature selection is to find a subset of features for optimal classification. A critical part of feature selection is to rank features according to their importance for classification. The Support Vector Machine (SVM) has been applied to a number of applications, such as bioinformatics, face recognition, text categorization, handwritten digit recognition, and so forth. Based on the success of the SVM, several feature selection algorithms that use it have recently been proposed. This paper proposes a new feature-ranking algorithm based on support vectors (SVs). Support vectors refer to those sample vectors that lie around the decision boundary between two different classes. Although SV-based feature ranking can be applied to any discriminant analysis, two linear discriminants are considered here: Fisher's linear discriminant and the Support Vector Machine. Features are ranked based on the weight associated with each feature or as determined by recursive feature elimination. The experiments show that our feature-ranking algorithms are competitive in accuracy with the existing methods and much faster.
机译:特征选择的问题是找到特征的子集以进行最佳分类。特征选择的关键部分是根据特征对分类的重要性对特征进行排名。支持向量机(SVM)已应用于许多应用程序,例如生物信息学,面部识别,文本分类,手写数字识别等。基于SVM的成功,最近提出了几种使用SVM的特征选择算法。提出了一种基于支持向量的新的特征排序算法。支持向量是指位于两个不同类别之间的决策边界周围的那些样本向量。尽管可以将基于SV的特征等级应用于任何判别分析,但此处考虑两个线性判别:Fisher线性判别和支持向量机。基于与每个特征关联的权重或由递归特征消除确定的特征来对特征进行排名。实验表明,我们的特征排名算法与现有方法相比具有更高的准确性,并且速度更快。

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