Deep multiview clustering via iteratively self-supervised universal and specific space learning

Multiview clustering seeks to partition objects via leveraging cross-view relations to provide a comprehensive description of the same objects. Most existing methods assume that different views are linear transformable or merely sampling from a common latent space. Such rigid assumptions betray real...

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Main Authors: ZHANG, Yue, HUANG, Qinjian, ZHANG, Bin, HE, Shengfeng, DAN, Tingting, PENG, Hong, CAI, Hongmin
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Language:English
Published: Institutional Knowledge at Singapore Management University 2021
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Online Access:https://ink.library.smu.edu.sg/sis_research/7851
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spelling sg-smu-ink.sis_research-88542023-06-15T09:00:05Z Deep multiview clustering via iteratively self-supervised universal and specific space learning ZHANG, Yue HUANG, Qinjian ZHANG, Bin HE, Shengfeng DAN, Tingting PENG, Hong CAI, Hongmin Multiview clustering seeks to partition objects via leveraging cross-view relations to provide a comprehensive description of the same objects. Most existing methods assume that different views are linear transformable or merely sampling from a common latent space. Such rigid assumptions betray reality, thus leading to unsatisfactory performance. To tackle the issue, we propose to learn both common and specific sampling spaces for each view to fully exploit their collaborative representations. The common space corresponds to the universal self-representation basis for all views, while the specific spaces are the view-specific basis accordingly. An iterative self-supervision scheme is conducted to strengthen the learned affinity matrix. The clustering is modeled by a convex optimization. We first solve its linear formulation by the popular scheme. Then, we employ the deep autoencoder structure to exploit its deep nonlinear formulation. The extensive experimental results on six real-world datasets demonstrate that the proposed model achieves uniform superiority over the benchmark methods. 2021-06-29T07:00:00Z text https://ink.library.smu.edu.sg/sis_research/7851 info:doi/10.1109/TCYB.2021.3086153 Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Feature extraction Tensors Kernel Correlation Task analysis Numerical models Training Deep autoencoder multiview clustering self-supervised universal and specific space learning Information Security
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic Feature extraction
Tensors
Kernel
Correlation
Task analysis
Numerical models
Training
Deep autoencoder
multiview clustering
self-supervised
universal and specific space learning
Information Security
spellingShingle Feature extraction
Tensors
Kernel
Correlation
Task analysis
Numerical models
Training
Deep autoencoder
multiview clustering
self-supervised
universal and specific space learning
Information Security
ZHANG, Yue
HUANG, Qinjian
ZHANG, Bin
HE, Shengfeng
DAN, Tingting
PENG, Hong
CAI, Hongmin
Deep multiview clustering via iteratively self-supervised universal and specific space learning
description Multiview clustering seeks to partition objects via leveraging cross-view relations to provide a comprehensive description of the same objects. Most existing methods assume that different views are linear transformable or merely sampling from a common latent space. Such rigid assumptions betray reality, thus leading to unsatisfactory performance. To tackle the issue, we propose to learn both common and specific sampling spaces for each view to fully exploit their collaborative representations. The common space corresponds to the universal self-representation basis for all views, while the specific spaces are the view-specific basis accordingly. An iterative self-supervision scheme is conducted to strengthen the learned affinity matrix. The clustering is modeled by a convex optimization. We first solve its linear formulation by the popular scheme. Then, we employ the deep autoencoder structure to exploit its deep nonlinear formulation. The extensive experimental results on six real-world datasets demonstrate that the proposed model achieves uniform superiority over the benchmark methods.
format text
author ZHANG, Yue
HUANG, Qinjian
ZHANG, Bin
HE, Shengfeng
DAN, Tingting
PENG, Hong
CAI, Hongmin
author_facet ZHANG, Yue
HUANG, Qinjian
ZHANG, Bin
HE, Shengfeng
DAN, Tingting
PENG, Hong
CAI, Hongmin
author_sort ZHANG, Yue
title Deep multiview clustering via iteratively self-supervised universal and specific space learning
title_short Deep multiview clustering via iteratively self-supervised universal and specific space learning
title_full Deep multiview clustering via iteratively self-supervised universal and specific space learning
title_fullStr Deep multiview clustering via iteratively self-supervised universal and specific space learning
title_full_unstemmed Deep multiview clustering via iteratively self-supervised universal and specific space learning
title_sort deep multiview clustering via iteratively self-supervised universal and specific space learning
publisher Institutional Knowledge at Singapore Management University
publishDate 2021
url https://ink.library.smu.edu.sg/sis_research/7851
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