Transductive Nonnegative Matrix Tri-Factorization

Nonnegative matrix factorization (NMF) decomposes a nonnegative matrix into the product of two lower-rank nonnegative matrices. Since NMF learns parts-based representation, it has been widely used as a feature learning component in many fields. However, standard NMF algorithms ignore the training la...

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Main Authors: Xiao Teng, Long Lan, Xiang Zhang, Guohua Dong, Zhigang Luo
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9075996/
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spelling doaj-a3eb7c3538904eb399f33575b66efd272021-03-30T02:37:21ZengIEEEIEEE Access2169-35362020-01-018813318134710.1109/ACCESS.2020.29895279075996Transductive Nonnegative Matrix Tri-FactorizationXiao Teng0https://orcid.org/0000-0002-8012-2088Long Lan1https://orcid.org/0000-0002-4238-8985Xiang Zhang2https://orcid.org/0000-0002-5201-3802Guohua Dong3Zhigang Luo4https://orcid.org/0000-0002-7552-201XScience and Technology on Parallel and distributed Processing, National University of Defense Technology, Changsha, ChinaInstitute for Quantum Information and State Key Laboratory of High Performance Computing, National University of Defense Technology, Changsha, ChinaInstitute for Quantum Information and State Key Laboratory of High Performance Computing, National University of Defense Technology, Changsha, ChinaScience and Technology on Parallel and distributed Processing, National University of Defense Technology, Changsha, ChinaScience and Technology on Parallel and distributed Processing, National University of Defense Technology, Changsha, ChinaNonnegative matrix factorization (NMF) decomposes a nonnegative matrix into the product of two lower-rank nonnegative matrices. Since NMF learns parts-based representation, it has been widely used as a feature learning component in many fields. However, standard NMF algorithms ignore the training labels as well as unlabeled data in the test domain. In this paper, we propose a transductive nonnegative matrix tri-factorization method (T-NMTF) to simultaneously exploit the label information of training examples and the statistical structure of features in the test domain. Different from standard NMF, nonnegative matrix tri-factorization (NMTF) decomposes a nonnegative matrix into the product of three lower-rank nonnegative matrices, and thus provides a flexible framework to transduce discriminative information of training examples to test examples. In particular, the proposed T-NMTF projects both training examples and test examples into a unified subspace, and expects the coefficients of training examples close to their label vectors. Since training examples and test examples are assumed to identically distributed, it is reasonable to expect the learned coefficients of test examples approximate their label vectors well. To estimate the T-NMTF parameters, we develop an efficient multiplicative update rule and prove its convergence. In addition, we propose a manifold regularized T-NMTF (MT-NMTF) algorithm that exploits the local geometry structure of the dataset to boost discriminant power. Experimental results on face recognition demonstrate the effectiveness of T-NMTF and MT-NMTF.https://ieeexplore.ieee.org/document/9075996/Nonnegative matrix factorizationnonnegative matrix tri-factorizationtransductive learning
collection DOAJ
language English
format Article
sources DOAJ
author Xiao Teng
Long Lan
Xiang Zhang
Guohua Dong
Zhigang Luo
spellingShingle Xiao Teng
Long Lan
Xiang Zhang
Guohua Dong
Zhigang Luo
Transductive Nonnegative Matrix Tri-Factorization
IEEE Access
Nonnegative matrix factorization
nonnegative matrix tri-factorization
transductive learning
author_facet Xiao Teng
Long Lan
Xiang Zhang
Guohua Dong
Zhigang Luo
author_sort Xiao Teng
title Transductive Nonnegative Matrix Tri-Factorization
title_short Transductive Nonnegative Matrix Tri-Factorization
title_full Transductive Nonnegative Matrix Tri-Factorization
title_fullStr Transductive Nonnegative Matrix Tri-Factorization
title_full_unstemmed Transductive Nonnegative Matrix Tri-Factorization
title_sort transductive nonnegative matrix tri-factorization
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Nonnegative matrix factorization (NMF) decomposes a nonnegative matrix into the product of two lower-rank nonnegative matrices. Since NMF learns parts-based representation, it has been widely used as a feature learning component in many fields. However, standard NMF algorithms ignore the training labels as well as unlabeled data in the test domain. In this paper, we propose a transductive nonnegative matrix tri-factorization method (T-NMTF) to simultaneously exploit the label information of training examples and the statistical structure of features in the test domain. Different from standard NMF, nonnegative matrix tri-factorization (NMTF) decomposes a nonnegative matrix into the product of three lower-rank nonnegative matrices, and thus provides a flexible framework to transduce discriminative information of training examples to test examples. In particular, the proposed T-NMTF projects both training examples and test examples into a unified subspace, and expects the coefficients of training examples close to their label vectors. Since training examples and test examples are assumed to identically distributed, it is reasonable to expect the learned coefficients of test examples approximate their label vectors well. To estimate the T-NMTF parameters, we develop an efficient multiplicative update rule and prove its convergence. In addition, we propose a manifold regularized T-NMTF (MT-NMTF) algorithm that exploits the local geometry structure of the dataset to boost discriminant power. Experimental results on face recognition demonstrate the effectiveness of T-NMTF and MT-NMTF.
topic Nonnegative matrix factorization
nonnegative matrix tri-factorization
transductive learning
url https://ieeexplore.ieee.org/document/9075996/
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AT longlan transductivenonnegativematrixtrifactorization
AT xiangzhang transductivenonnegativematrixtrifactorization
AT guohuadong transductivenonnegativematrixtrifactorization
AT zhigangluo transductivenonnegativematrixtrifactorization
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