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Autori principali: Wang, Zhongwen, Li, Xingfeng, Sun, Yinghui, Sun, Quansen, Sun, Yuan, Ling, Han, Dai, Jian, Ren, Zhenwen
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2412.18847
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author Wang, Zhongwen
Li, Xingfeng
Sun, Yinghui
Sun, Quansen
Sun, Yuan
Ling, Han
Dai, Jian
Ren, Zhenwen
author_facet Wang, Zhongwen
Li, Xingfeng
Sun, Yinghui
Sun, Quansen
Sun, Yuan
Ling, Han
Dai, Jian
Ren, Zhenwen
contents In recent years, anchor and hash-based multi-view clustering methods have gained attention for their efficiency and simplicity in handling large-scale data. However, existing methods often overlook the interactions among multi-view data and higher-order cooperative relationships during projection, negatively impacting the quality of hash representation in low-dimensional spaces, clustering performance, and sensitivity to noise. To address this issue, we propose a novel approach named Tensor-Interacted Projection and Cooperative Hashing for Multi-View Clustering(TPCH). TPCH stacks multiple projection matrices into a tensor, taking into account the synergies and communications during the projection process. By capturing higher-order multi-view information through dual projection and Hamming space, TPCH employs an enhanced tensor nuclear norm to learn more compact and distinguishable hash representations, promoting communication within and between views. Experimental results demonstrate that this refined method significantly outperforms state-of-the-art methods in clustering on five large-scale multi-view datasets. Moreover, in terms of CPU time, TPCH achieves substantial acceleration compared to the most advanced current methods. The code is available at \textcolor{red}{\url{https://github.com/jankin-wang/TPCH}}.
format Preprint
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institution arXiv
publishDate 2024
record_format arxiv
spellingShingle TPCH: Tensor-interacted Projection and Cooperative Hashing for Multi-view Clustering
Wang, Zhongwen
Li, Xingfeng
Sun, Yinghui
Sun, Quansen
Sun, Yuan
Ling, Han
Dai, Jian
Ren, Zhenwen
Machine Learning
In recent years, anchor and hash-based multi-view clustering methods have gained attention for their efficiency and simplicity in handling large-scale data. However, existing methods often overlook the interactions among multi-view data and higher-order cooperative relationships during projection, negatively impacting the quality of hash representation in low-dimensional spaces, clustering performance, and sensitivity to noise. To address this issue, we propose a novel approach named Tensor-Interacted Projection and Cooperative Hashing for Multi-View Clustering(TPCH). TPCH stacks multiple projection matrices into a tensor, taking into account the synergies and communications during the projection process. By capturing higher-order multi-view information through dual projection and Hamming space, TPCH employs an enhanced tensor nuclear norm to learn more compact and distinguishable hash representations, promoting communication within and between views. Experimental results demonstrate that this refined method significantly outperforms state-of-the-art methods in clustering on five large-scale multi-view datasets. Moreover, in terms of CPU time, TPCH achieves substantial acceleration compared to the most advanced current methods. The code is available at \textcolor{red}{\url{https://github.com/jankin-wang/TPCH}}.
title TPCH: Tensor-interacted Projection and Cooperative Hashing for Multi-view Clustering
topic Machine Learning
url https://arxiv.org/abs/2412.18847