Dual semi-supervised convex nonnegative matrix factorization for data representation

Semi-supervised nonnegative matrix factorization (NMF) has received considerable attention in machine learning and data mining. A new semi-supervised NMF method, called dual semi-supervised convex nonnegative matrix factorization (DCNMF), is proposed in this paper for fully using the limited label i...

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Main Authors: Peng, Siyuan, Yang, Zhijing, Ling, Bingo Wing-Kuen, Chen, Badong, Lin, Zhiping
Other Authors: School of Electrical and Electronic Engineering
Format: Article
Language:English
Published: 2022
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Online Access:https://hdl.handle.net/10356/161773
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1617732022-09-19T08:40:52Z Dual semi-supervised convex nonnegative matrix factorization for data representation Peng, Siyuan Yang, Zhijing Ling, Bingo Wing-Kuen Chen, Badong Lin, Zhiping School of Electrical and Electronic Engineering Engineering::Electrical and electronic engineering Semi-Supervised Learning Data Representation Semi-supervised nonnegative matrix factorization (NMF) has received considerable attention in machine learning and data mining. A new semi-supervised NMF method, called dual semi-supervised convex nonnegative matrix factorization (DCNMF), is proposed in this paper for fully using the limited label information. Specifically, DCNMF simultaneously incorporates the pointwise and pairwise constraints of labeled samples as dual supervisory information into convex NMF, which results in a better low-dimensional data representation. Moreover, DCNMF imposes the nonnegative constraint only on the coefficient matrix but not on the base matrix. Consequently, DCNMF can process mixed-sign data, and hence enlarge the range of applications. We derive an efficient alternating iterative algorithm for DCNMF to solve the optimization, and analyze the proposed DCNMF method in terms of the convergence and computational complexity. We also discuss the relationships between DCNMF and several typical NMF based methods. Experimental results illustrate that DCNMF outperforms the related state-of-the-art NMF methods on nonnegative and mixed-sign datasets for clustering applications. This work is supported in part by the National Nature Science Foundation of China (No. U1701266, 91648208, 61976175), and Guangdong Intellectual Property Big Data Key Laboratory (No. 2018B030322016). 2022-09-19T08:40:52Z 2022-09-19T08:40:52Z 2022 Journal Article Peng, S., Yang, Z., Ling, B. W., Chen, B. & Lin, Z. (2022). Dual semi-supervised convex nonnegative matrix factorization for data representation. Information Sciences, 585, 571-593. https://dx.doi.org/10.1016/j.ins.2021.11.045 0020-0255 https://hdl.handle.net/10356/161773 10.1016/j.ins.2021.11.045 2-s2.0-85120779329 585 571 593 en Information Sciences © 2021 Elsevier Inc. All rights reserved.
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Electrical and electronic engineering
Semi-Supervised Learning
Data Representation
spellingShingle Engineering::Electrical and electronic engineering
Semi-Supervised Learning
Data Representation
Peng, Siyuan
Yang, Zhijing
Ling, Bingo Wing-Kuen
Chen, Badong
Lin, Zhiping
Dual semi-supervised convex nonnegative matrix factorization for data representation
description Semi-supervised nonnegative matrix factorization (NMF) has received considerable attention in machine learning and data mining. A new semi-supervised NMF method, called dual semi-supervised convex nonnegative matrix factorization (DCNMF), is proposed in this paper for fully using the limited label information. Specifically, DCNMF simultaneously incorporates the pointwise and pairwise constraints of labeled samples as dual supervisory information into convex NMF, which results in a better low-dimensional data representation. Moreover, DCNMF imposes the nonnegative constraint only on the coefficient matrix but not on the base matrix. Consequently, DCNMF can process mixed-sign data, and hence enlarge the range of applications. We derive an efficient alternating iterative algorithm for DCNMF to solve the optimization, and analyze the proposed DCNMF method in terms of the convergence and computational complexity. We also discuss the relationships between DCNMF and several typical NMF based methods. Experimental results illustrate that DCNMF outperforms the related state-of-the-art NMF methods on nonnegative and mixed-sign datasets for clustering applications.
author2 School of Electrical and Electronic Engineering
author_facet School of Electrical and Electronic Engineering
Peng, Siyuan
Yang, Zhijing
Ling, Bingo Wing-Kuen
Chen, Badong
Lin, Zhiping
format Article
author Peng, Siyuan
Yang, Zhijing
Ling, Bingo Wing-Kuen
Chen, Badong
Lin, Zhiping
author_sort Peng, Siyuan
title Dual semi-supervised convex nonnegative matrix factorization for data representation
title_short Dual semi-supervised convex nonnegative matrix factorization for data representation
title_full Dual semi-supervised convex nonnegative matrix factorization for data representation
title_fullStr Dual semi-supervised convex nonnegative matrix factorization for data representation
title_full_unstemmed Dual semi-supervised convex nonnegative matrix factorization for data representation
title_sort dual semi-supervised convex nonnegative matrix factorization for data representation
publishDate 2022
url https://hdl.handle.net/10356/161773
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