DWCL: Dual-Weighted Contrastive Learning for Multi-View Clustering

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View a PDF of the paper titled DWCL: Dual-Weighted Contrastive Learning for Multi-View Clustering, by Hanning Yuan and Zhihui Zhang and Qi Guo and Lianhua Chi and Sijie Ruan and Jinhui Pang and Xiaoshuai Hao

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Abstract:Multi-view contrastive clustering (MVCC) has gained significant attention for generating consistent clustering structures from multiple views through contrastive learning. However, most existing MVCC methods create cross-views by combining any two views, leading to a high volume of unreliable pairs. Furthermore, these approaches often overlook discrepancies in multi-view representations, resulting in representation degeneration. To address these challenges, we introduce a novel model called Dual-Weighted Contrastive Learning (DWCL) for Multi-View Clustering. Specifically, to reduce the impact of unreliable cross-views, we introduce an innovative Best-Other (B-O) contrastive mechanism that enhances the representation of individual views at a low computational cost. Furthermore, we develop a dual weighting strategy that combines a view quality weight, reflecting the quality of each view, with a view discrepancy weight. This approach effectively mitigates representation degeneration by downplaying cross-views that are both low in quality and high in discrepancy. We theoretically validate the efficiency of the B-O contrastive mechanism and the effectiveness of the dual weighting strategy. Extensive experiments demonstrate that DWCL outperforms previous methods across eight multi-view datasets, showcasing superior performance and robustness in MVCC. Specifically, our method achieves absolute accuracy improvements of 5.4% and 5.6% compared to state-of-the-art methods on the Caltech6V7 and MSRCv1 datasets, respectively.

Submission history

From: Zhihui Zhang [view email]
[v1]
Tue, 26 Nov 2024 11:57:20 UTC (1,815 KB)
[v2]
Thu, 23 Jan 2025 05:52:26 UTC (2,074 KB)



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