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A Novel Support Vector Machine with Class-dependent Features for Biomedical Data

机译:一种新型的支持向量机,具有基于类别的生物医学数据特征

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In this paper we propose a novel support vector machine (SVM) with class-dependent features. According to an importance measure, e.g., the RELIEF weight measure or class separability measure, we rank the features importance for each class against the rest of classes. For each class we select an optimal feature subset using a classifier, e.g., the support vector machine (SVM). For the classification on these class-dependent feature subsets, we propose to construct a novel SVM using "one-against-all" in 2 processes: 1) construct one model for each class by training the classifier with the class''s optimal feature subset; 2) during testing, each test pattern is tested on all models and the model with the maximum output decides the class of the test pattern. The method''s performance is evaluated on two benchmark datasets. Our results indicate that our novel SVM classifier can effectively realize the classification of class-dependent feature subsets found by our wrapper approach which can remove irrelevant features for each class and at the same time maintain or even improve the classification accuracy in comparison with other feature selection methods.
机译:在本文中,我们提出了一种具有类相关特征的新型支持向量机(SVM)。根据重要性度量,例如RELIEF权重度量或类可分离性度量,我们将每个类的特征重要性与其余类进行比较。对于每个类别,我们使用分类器(例如,支持向量机(SVM))选择最佳特征子集。对于这些与类相关的特征子集的分类,我们建议在2个过程中使用“反对所有”构建一个新颖的SVM:1)通过训练具有该类最佳特征的分类器,为每个类构建一个模型子集2)在测试期间,将在所有模型上测试每个测试图案,并且具有最大输出的模型将决定测试图案的类别。该方法的性能在两个基准数据集上进行评估。我们的结果表明,我们新颖的SVM分类器可以有效地实现通过包装器方法发现的与类相关的特征子集的分类,该方法可以去除每个类的无关特征,同时与其他特征选择相比,甚至可以保持甚至提高分类精度方法。

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    《》|2006年|1666-1670|共5页
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    Zhou; Nina; Wang; Lipo;

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