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Gene expression data clustering based on graph regularized subspace segmentation

机译:基于图正则化子空间分割的基因表达数据聚类

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摘要

Gene expression data clustering offers a powerful approach to detect cancers. Specifically, gene expression data clustering based on nonnegative matrix factorization (NMF) has been widely applied to identify tumors. However, traditional NMF methods cannot deal with negative data and easily lead to local optimum because the iterative methods are adopted to solve the optimal problem. To avoid these problems of NMF methods, we propose graph regularized subspace segmentation method (GRSS) for clustering gene expression data. The global optimal solution of GRSS can be achieved by solving a Sylvester equation. Experimental results on eight gene expression data sets show that GRSS has significant performance improvement compared with other subspace segmentation methods, traditional clustering methods and various extensions of NMF.
机译:基因表达数据聚类提供了检测癌症的有力方法。具体而言,基于非负矩阵分解(NMF)的基因表达数据聚类已广泛应用于识别肿瘤。然而,传统的NMF方法无法处理负数据,并且容易导致局部最优,因为采用了迭代方法来解决最优问题。为了避免NMF方法的这些问题,我们提出了图正则化子空间分割方法(GRSS)来聚类基因表达数据。 GRSS的全局最优解可以通过求解Sylvester方程来实现。对八个基因表达数据集的实验结果表明,与其他子空间分割方法,传统聚类方法和NMF的各种扩展相比,GRSS具有显着的性能改进。

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