Semi-supervised Multi-view Classification via Consistency Constraints

Since the traditional semi-supervised multi-view algorithms seldom take into account the diversity of information contained in different views and neglect the consistency of spatial structure between different views, they hardly achieve promising performance when dealing with multi-view data with no...

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Päätekijä: LIU Yu, MENG Min, WU Jigang
Aineistotyyppi: Artikkeli
Kieli:zho
Julkaistu: Journal of Computer Engineering and Applications Beijing Co., Ltd., Science Press 2022-01-01
Sarja:Jisuanji kexue yu tansuo
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Linkit:http://fcst.ceaj.org/fileup/1673-9418/PDF/2009020.pdf
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author LIU Yu, MENG Min, WU Jigang
author_facet LIU Yu, MENG Min, WU Jigang
author_sort LIU Yu, MENG Min, WU Jigang
collection DOAJ
description Since the traditional semi-supervised multi-view algorithms seldom take into account the diversity of information contained in different views and neglect the consistency of spatial structure between different views, they hardly achieve promising performance when dealing with multi-view data with noise and outlying entries. Although some researchers have proposed semi-supervised multi-view methods,these methods do not make full use of sample discriminant information and subspace structure information under different metric learning,which leads to the unsatisfactory classification results. To deal with the above problems,this paper proposes a semi-supervised multi-view classification via consistency constraint (SMCC) for multi-view data analysis. Firstly, the consistency constraints between different views are enhanced based on the Hilbert-Schmidt independence criteria (HSIC). Then, the dimensionality reduction is performed by feature projection to preserve the local manifold structure, which is integrated with Frobenius norm constraint to improve the robustness of the algorithm. Furthermore, the corresponding weights are adaptively assigned to different views to reduce the influence of feature information and noise pollution in different views. Finally, the proposed model can be solved efficiently using the linear alternative direction method with adaptive penalty and eigen-decomposition. The experimental results on four benchmark datasets show that the proposed algorithm can discover more effective discriminant information from multi-view data and its accuracy is improved.
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spelling doaj.art-6e909e04beaa42f696d06b13a2223d3c2022-12-21T19:21:09ZzhoJournal of Computer Engineering and Applications Beijing Co., Ltd., Science PressJisuanji kexue yu tansuo1673-94182022-01-0116124225210.3778/j.issn.1673-9418.2009020Semi-supervised Multi-view Classification via Consistency ConstraintsLIU Yu, MENG Min, WU Jigang0School of Computer Science and Technology, Guangdong University of Technology, Guangzhou 510006, ChinaSince the traditional semi-supervised multi-view algorithms seldom take into account the diversity of information contained in different views and neglect the consistency of spatial structure between different views, they hardly achieve promising performance when dealing with multi-view data with noise and outlying entries. Although some researchers have proposed semi-supervised multi-view methods,these methods do not make full use of sample discriminant information and subspace structure information under different metric learning,which leads to the unsatisfactory classification results. To deal with the above problems,this paper proposes a semi-supervised multi-view classification via consistency constraint (SMCC) for multi-view data analysis. Firstly, the consistency constraints between different views are enhanced based on the Hilbert-Schmidt independence criteria (HSIC). Then, the dimensionality reduction is performed by feature projection to preserve the local manifold structure, which is integrated with Frobenius norm constraint to improve the robustness of the algorithm. Furthermore, the corresponding weights are adaptively assigned to different views to reduce the influence of feature information and noise pollution in different views. Finally, the proposed model can be solved efficiently using the linear alternative direction method with adaptive penalty and eigen-decomposition. The experimental results on four benchmark datasets show that the proposed algorithm can discover more effective discriminant information from multi-view data and its accuracy is improved.http://fcst.ceaj.org/fileup/1673-9418/PDF/2009020.pdf|multi-view|adaptive weight|consistency constraints|feature projection|semi-supervised learning
spellingShingle LIU Yu, MENG Min, WU Jigang
Semi-supervised Multi-view Classification via Consistency Constraints
Jisuanji kexue yu tansuo
|multi-view|adaptive weight|consistency constraints|feature projection|semi-supervised learning
title Semi-supervised Multi-view Classification via Consistency Constraints
title_full Semi-supervised Multi-view Classification via Consistency Constraints
title_fullStr Semi-supervised Multi-view Classification via Consistency Constraints
title_full_unstemmed Semi-supervised Multi-view Classification via Consistency Constraints
title_short Semi-supervised Multi-view Classification via Consistency Constraints
title_sort semi supervised multi view classification via consistency constraints
topic |multi-view|adaptive weight|consistency constraints|feature projection|semi-supervised learning
url http://fcst.ceaj.org/fileup/1673-9418/PDF/2009020.pdf
work_keys_str_mv AT liuyumengminwujigang semisupervisedmultiviewclassificationviaconsistencyconstraints