Efficient Multi-view Clustering via Unified and Discrete Bipartite Graph Learning
Si-Guo Fang, Dong Huang, Xiao-Sha Cai, Chang-Dong Wang, Chaobo He,, Yong Tang

TL;DR
This paper introduces an efficient multi-view clustering method that learns unified and discrete bipartite graphs, addressing computational complexity and discretization issues in existing graph-based clustering algorithms.
Contribution
It proposes a novel unified bipartite graph learning framework with discrete cluster structure enforcement, enabling direct and efficient multi-view clustering without additional partitioning.
Findings
Achieves linear time complexity in data size.
Demonstrates robustness and efficiency on various datasets.
Outperforms existing multi-view clustering methods.
Abstract
Although previous graph-based multi-view clustering algorithms have gained significant progress, most of them are still faced with three limitations. First, they often suffer from high computational complexity, which restricts their applications in large-scale scenarios. Second, they usually perform graph learning either at the single-view level or at the view-consensus level, but often neglect the possibility of the joint learning of single-view and consensus graphs. Third, many of them rely on the k-means for discretization of the spectral embeddings, which lack the ability to directly learn the graph with discrete cluster structure. In light of this, this paper presents an efficient multi-view clustering approach via unified and discrete bipartite graph learning (UDBGL). Specifically, the anchor-based subspace learning is incorporated to learn the view-specific bipartite graphs from…
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Taxonomy
TopicsAdvanced Computing and Algorithms · Remote-Sensing Image Classification · Complex Network Analysis Techniques
