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Incorporating genetic algorithm into rough feature selection for high dimensional biomedical data

机译:将遗传算法纳入高维生物医学数据的粗糙特征选择

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In this paper, a hybrid approach incorporating genetic algorithm and rough set theory into Feature Selection is proposed for searching for the best subset of optimal features. The approach utilizes K-means clustering for partitioning attribute values, the rough set-based approach for reducing redundant data, and the genetic algorithm for searching for the best subset of features. A set of six attributes was obtained as the best subset using the proposed algorithm on the colon cancer dataset. Classification was carried out using this set of six attributes with 23 classifiers from WEKA (Waikato Environment for Knowledge Analysis) software to examine their significance to classify unseen test data. In addition, the set of 6 genes found by the proposed approach was also examined for their relevance to known biomarkers in the colon cancer domain.
机译:本文提出了一种将遗传算法和粗糙集理论结合到特征选择中的混合方法,用于搜索最佳特征的最佳子集。该方法利用K-Means聚类来分区属性值,用于减少冗余数据的粗糙集的方法,以及用于搜索最佳特征子集的遗传算法。使用所提出的算法在结肠癌数据集上获得一组六个属性作为最佳子集。使用这套六个属性进行分类,其中六个属性具有来自Weka(Waikato环境的33个分类器,用于了解)软件,以检查其分类说明检测数据的重要性。此外,还考虑了所提出的方法的一组6个基因,以研究其与结肠癌结构域中的已知生物标志物的相关性。

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