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Efficient feature selection and classification for microarray data

机译:芯片数据的有效特征选择和分类

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摘要

Feature selection and classification are the main topics in microarray data analysis. Although many feature selection methods have been proposed and developed in this field, SVM-RFE (Support Vector Machine based on Recursive Feature Elimination) is proved as one of the best feature selection methods, which ranks the features (genes) by training support vector machine classification model and selects key genes combining with recursive feature elimination strategy. The principal drawback of SVM-RFE is the huge time consumption. To overcome this limitation, we introduce a more efficient implementation of linear support vector machines and improve the recursive feature elimination strategy and then combine them together to select informative genes. Besides, we propose a simple resampling method to preprocess the datasets, which makes the information distribution of different kinds of samples balanced and the classification results more credible. Moreover, the applicability of four common classifiers is also studied in this paper. Extensive experiments are conducted on six most frequently used microarray datasets in this field, and the results show that the proposed methods have not only reduced the time consumption greatly but also obtained comparable classification performance.
机译:特征选择和分类是微阵列数据分析的主要主题。尽管在该领域已经提出和开发了许多特征选择方法,但事实证明,SVM-RFE(基于递归特征消除的支持向量机)是最好的特征选择方法之一,它通过训练支持向量机对特征(基因)进行排序分类模型并结合递归特征消除策略选择关键基因。 SVM-RFE的主要缺点是耗时长。为克服此限制,我们引入了线性支持向量机的更有效实现,并改进了递归特征消除策略,然后将它们组合在一起以选择信息基因。此外,我们提出了一种简单的重采样方法对数据集进行预处理,以使不同样本的信息分布平衡,分类结果更加可信。此外,本文还研究了四种常见分类器的适用性。在该领域最常用的六个微阵列数据集上进行了广泛的实验,结果表明所提出的方法不仅大大减少了时间消耗,而且获得了可比的分类性能。

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