Incomplete and Unpaired Multi-View Graph Clustering with Cross-View Feature Fusion

Published: 01 Jan 2025, Last Modified: 05 Nov 2025AAAI 2025EveryoneRevisionsBibTeXCC BY-SA 4.0
Abstract: Due to its effectiveness and efficiency, graph-based multi-view clustering has recently attracted much attention. However, the multi-view data are often incomplete and unpaired in real-world applications as a consequence of data loss or corruption. Although efforts have been made through a series of methods to address the problems of incomplete or unpaired multi-view data, the following issues still persist: 1) Most existing methods only focus on the incomplete multi-view data or unpaired multi-view data, and exhibit weaknesses when addressing both incomplete and unpaired multi-view data simultaneously. 2) Some methods neglect the graph information of the data from different views during the learning process. To tackle these issues, we propose the Multi-view Graph Clustering framework with Cross-view Feature Fusion (MGCCFF), a novel approach for clustering incomplete and unpaired multi-view data. Specifically, MGCCFF learns soft clustering label information from complete data and utilizes this to capture category-level cross-view correspondences. It then learns latent representation enriched with cross-view information based on the established mappings. To obtain a multi-view graph structure under conditions of incomplete and unpaired data, MGCCFF innovatively integrates the concept of self-expression with the autoencoder architecture and exploits the latent relationships between labels and the graph structure, thereby enabling the generation of sparse and accurate graphical structure under multi-view conditions for the final clustering task. The experiments on incomplete and unpaired multi-view datasets demonstrate that MGCCFF outperforms state-of-the-art methods.
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