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Hyper-Graph Regularized Constrained NMF for Selecting Differentially Expressed Genes and Tumor Classification

机译:用于选择差异表达基因和肿瘤分类的超曲线图正规化的NMF

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摘要

Non-negative Matrix Factorization (NMF) is a dimensionality reduction approach for learning a parts-based and linear representation of non-negative data. It has attracted more attention because of that. In practice, NMF not only neglects the manifold structure of data samples, but also overlooks the priori label information of different classes. In this paper, a novel matrix decomposition method called Hyper-graph regularized Constrained Non-negative Matrix Factorization (HCNMF) is proposed for selecting differentially expressed genes and tumor sample classification. The advantage of hyper-graph learning is to capture local spatial information in high dimensional data. This method incorporates a hyper-graph regularization constraint to consider the higher order data sample relationships. The application of hyper-graph theory can effectively find pathogenic genes in cancer datasets. Besides, the label information is further incorporated in the objective function to improve the discriminative ability of the decomposition matrix. Supervised learning with label information greatly improves the classification effect. We also provide the iterative update rules and convergence proofs for the optimization problems of HCNMF. Experiments under The Cancer Genome Atlas (TCGA) datasets confirm the superiority of HCNMF algorithm compared with other representative algorithms through a set of evaluations.
机译:非负矩阵分解(NMF)是用于学习基于部件的非负数据的线性表示的维度降低方法。它因为这个而引起了更多的关注。在实践中,NMF不仅忽略了数据样本的歧管结构,而且忽略了不同类的先验标签信息。本文提出了一种新的矩阵分解方法,称为超曲线图正规化约束的非负矩阵分解(HCNMF),用于选择差异表达的基因和肿瘤样品分类。超图学习的优点是在高维数据中捕获局部空间信息。该方法包含一个超图正则化约束,以考虑更高阶数据示例关系。超图理论的应用可以有效地发现癌数据集中的致病基因。此外,标签信息进一步结合在目标函数中以改善分解矩阵的辨别能力。通过标签信息监督学习大大提高了分类效果。我们还提供了HCNMF优化问题的迭代更新规则和融合证明。在癌症基因组Atlas(TCGA)数据集下的实验证实了HCNMF算法的优越性与通过一组评估的其他代表性算法相比。

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