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Attribute selection based on information gain ratio in fuzzy rough set theory with application to tumor classification

机译:模糊粗糙集理论中基于信息增益比的属性选择及其在肿瘤分类中的应用

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摘要

Tumor classification based on gene expression levels is important for tumor diagnosis. Since tumor data in gene expression contain thousands of attributes, attribute selection for tumor data in gene expression becomes a key point for tumor classification. Inspired by the concept of gain ratio in decision tree theory, an attribute selection method based on fuzzy gain ratio under the framework of fuzzy rough set theory is proposed. The approach is compared to several other approaches on three real world tumor data sets in gene expression. Results show that the proposed method is effective. This work may supply an optional strategy for dealing with tumor data in gene expression or other applications.
机译:基于基因表达水平的肿瘤分类对于肿瘤诊断很重要。由于基因表达中的肿瘤数据包含数千个属性,因此基因表达中肿瘤数据的属性选择成为肿瘤分类的关键。在决策树理论中,以增益比的概念为灵感,提出了一种在模糊粗糙集理论框架下基于模糊增益比的属性选择方法。在基因表达的三个真实世界肿瘤数据集上,将该方法与其他几种方法进行了比较。结果表明,该方法是有效的。这项工作可能为处理基因表达或其他应用中的肿瘤数据提供一种可选策略。

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