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Domain Driven Two-Phase Feature Selection Method Based on Bhattacharyya Distance and Kernel Distance Measurements

机译:基于Bhattacharyya距离和核距离测量的域驱动两相特征选择方法

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This paper proposes a two-phase feature selection method specific for bioinformatics domain from classification perspective in data mining. In the first phase, Bhattacharyya distance measurement is used for filtering the majority of irrelevant genes. Upon the basis, we apply floating sequential search method (FSSM) to further select informative gene set using kernel distance as measurement of class separability. The verification of colon tissue dataset using support vector machines (SVMs) proves that informative gene set selected by our method is acceptable for disease identification.
机译:从分类的角度出发,提出了一种针对生物信息学领域的两阶段特征选择方法。在第一阶段,Bhattacharyya距离测量用于过滤大多数不相关的基因。在此基础上,我们应用浮动序贯搜索法(FSSM)进一步选择了以内核距离作为类可分离性度量的信息基因集。使用支持向量机(SVM)对结肠组织数据集进行的验证证明,通过我们的方法选择的信息性基因集可用于疾病识别。

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