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Robust hypergraph regularized non-negative matrix factorization for sample clustering and feature selection in multi-view gene expression data

Authors :
Yu, Na
Gao, Ying-Lian
Liu, Jin-Xing
Wang, Juan
Shang, Junliang
Source :
Human Genomics; October 2019, Vol. 13 Issue: Supplement 1
Publication Year :
2019

Abstract

Background: As one of the most popular data representation methods, non-negative matrix decomposition (NMF) has been widely concerned in the tasks of clustering and feature selection. However, most of the previously proposed NMF-based methods do not adequately explore the hidden geometrical structure in the data. At the same time, noise and outliers are inevitably present in the data. Results: To alleviate these problems, we present a novel NMF framework named robust hypergraph regularized non-negative matrix factorization (RHNMF). In particular, the hypergraph Laplacian regularization is imposed to capture the geometric information of original data. Unlike graph Laplacian regularization which captures the relationship between pairwise sample points, it captures the high-order relationship among more sample points. Moreover, the robustness of the RHNMF is enhanced by using the L<subscript>2,1</subscript>-norm constraint when estimating the residual. This is because the L<subscript>2,1</subscript>-norm is insensitive to noise and outliers. Conclusions: Clustering and common abnormal expression gene (com-abnormal expression gene) selection are conducted to test the validity of the RHNMF model. Extensive experimental results on multi-view datasets reveal that our proposed model outperforms other state-of-the-art methods.

Details

Language :
English
ISSN :
14739542 and 14797364
Volume :
13
Issue :
Supplement 1
Database :
Supplemental Index
Journal :
Human Genomics
Publication Type :
Periodical
Accession number :
ejs51527472
Full Text :
https://doi.org/10.1186/s40246-019-0222-6