Align then Fusion: Generalized Large-scale Multi-view Clustering with Anchor Matching Correspondences
Siwei Wang, Xinwang Liu, Suyuan Liu, Jiaqi Jin, Wenxuan Tu, Xinzhong, Zhu, En Zhu

TL;DR
This paper introduces FMVACC, a novel framework for multi-view clustering that effectively aligns anchor graphs across views using feature and structure information, improving clustering accuracy and efficiency.
Contribution
The paper proposes the first generalized anchor correspondence method for multi-view clustering, addressing the anchor-unaligned problem with a flexible, theoretically grounded approach.
Findings
FMVACC outperforms existing methods on seven benchmark datasets.
Anchor alignment significantly improves clustering performance.
The method is efficient and adaptable to various multi-view clustering scenarios.
Abstract
Multi-view anchor graph clustering selects representative anchors to avoid full pair-wise similarities and therefore reduce the complexity of graph methods. Although widely applied in large-scale applications, existing approaches do not pay sufficient attention to establishing correct correspondences between the anchor sets across views. To be specific, anchor graphs obtained from different views are not aligned column-wisely. Such an \textbf{A}nchor-\textbf{U}naligned \textbf{P}roblem (AUP) would cause inaccurate graph fusion and degrade the clustering performance. Under multi-view scenarios, generating correct correspondences could be extremely difficult since anchors are not consistent in feature dimensions. To solve this challenging issue, we propose the first study of the generalized and flexible anchor graph fusion framework termed \textbf{F}ast \textbf{M}ulti-\textbf{V}iew…
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Taxonomy
TopicsRemote-Sensing Image Classification
