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Sparse maximum margin discriminant analysis for feature extraction and gene selection on gene expression data

机译:基因表达数据的特征提取和基因选择的稀疏最大裕度判别分析

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摘要

Dimensionality reduction is necessary for gene expression data classification. In this paper, we propose a new method for reducing the dimensionality of gene expression data. First, based on a sparse representation, we developed a new criterion for characterizing the margin, which is called sparse maximum margin discriminant analysis (SMMDA); this approach can be used to find an optimal transform matrix such that the sparse margin is maximal in the transformed space. Second, using SMMDA, we present a new feature extraction method for gene expression data. Third, based on SMMDA, we propose a new discriminant gene selection method. During gene selection, we first found the one-dimensional projection of the gene expression data in the most separable direction using SMMDA. Then, we applied the sparse representation technique to regress the projection, and we obtained the relevance vector for the gene set. Discriminant genes were then selected according to this vector. Compared with the conventional method of maximum margin discriminant analysis, the proposed SMMDA method successfully avoids the difficulty of parameter selection. Extensive experiments using publicly available gene expression datasets showed that SMMDA is efficient for feature extraction and gene selection.
机译:降维对于基因表达数据分类是必要的。在本文中,我们提出了一种减少基因表达数据维数的新方法。首先,基于稀疏表示,我们开发了一种用于表征裕度的新标准,称为稀疏最大裕度判别分析(SMMDA);该方法可用于找到最佳变换矩阵,以使稀疏裕度在变换空间中最大。其次,使用SMMDA,我们提出了一种用于基因表达数据的新特征提取方法。第三,基于SMMDA,提出了一种新的判别基因选择方法。在基因选择过程中,我们首先使用SMMDA在最可分离的方向上发现了基因表达数据的一维投影。然后,我们应用稀疏表示技术对投影进行回归,从而获得了该基因集的相关向量。然后根据该载体选择判别基因。与传统的最大余量判别分析方法相比,提出的SMMDA方法成功地避免了参数选择的困难。使用公开可用的基因表达数据集进行的大量实验表明,SMMDA对于特征提取和基因选择非常有效。

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