19 April 2016 Manifold regularized non-negative matrix factorization with label information
Huirong Li, Jiangshe Zhang, Changpeng Wang, Junmin Liu
Author Affiliations +
Abstract
Non-negative matrix factorization (NMF) as a popular technique for finding parts-based, linear representations of non-negative data has been successfully applied in a wide range of applications, such as feature learning, dictionary learning, and dimensionality reduction. However, both the local manifold regularization of data and the discriminative information of the available label have not been taken into account together in NMF. We propose a new semisupervised matrix decomposition method, called manifold regularized non-negative matrix factorization (MRNMF) with label information, which incorporates the manifold regularization and the label information into the NMF to improve the performance of NMF in clustering tasks. We encode the local geometrical structure of the data space by constructing a nearest neighbor graph and enhance the discriminative ability of different classes by effectively using the label information. Experimental comparisons with the state-of-the-art methods on theCOIL20, PIE, Extended Yale B, and MNIST databases demonstrate the effectiveness of MRNMF.
© 2016 SPIE and IS&T 1017-9909/2016/$25.00 © 2016 SPIE and IS&T
Huirong Li, Jiangshe Zhang, Changpeng Wang, and Junmin Liu "Manifold regularized non-negative matrix factorization with label information," Journal of Electronic Imaging 25(2), 023023 (19 April 2016). https://doi.org/10.1117/1.JEI.25.2.023023
Published: 19 April 2016
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CITATIONS
Cited by 6 scholarly publications.
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KEYWORDS
Databases

Lithium

Matrices

Machine learning

Ultraviolet radiation

Algorithm development

Principal component analysis

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