首页> 外文会议>Evolutionary Computation, Machine Learning and Data Mining in Bioinformatics; Lecture Notes in Computer Science; 4447 >One-Versus-One and One-Versus-All Multiclass SVM-RFE for Gene Selection in Cancer Classification
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One-Versus-One and One-Versus-All Multiclass SVM-RFE for Gene Selection in Cancer Classification

机译:一对一和一对全多类SVM-RFE用于癌症分类中的基因选择

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We propose a feature selection method for multiclass classification. The proposed method selects features in backward elimination and computes feature ranking scores at each step from analysis of weight vectors of multiple two-class linear Support Vector Machine classifiers from one-versus-one or one-versus-all decomposition of a multi-class classification problem. We evaluated the proposed method on three gene expression datasets for multiclass cancer classification. For comparison, one filtering feature selection method was included in the numerical study. The study demonstrates the effectiveness of the proposed method in selecting a compact set of genes to ensure a good classification accuracy.
机译:我们提出了一种用于多类分类的特征选择方法。所提出的方法通过从多类分类的一对一或全部分解中对多个两类线性支持向量机分类器的权重向量进行分析,选择后向消除中的特征并计算每个步骤的特征等级得分问题。我们在三个基因表达数据集上针对多类癌症分类评估了该方法。为了进行比较,数值研究中包括了一种过滤特征选择方法。这项研究证明了该方法在选择紧凑基因集以确保良好分类精度方面的有效性。

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