Publication | Closed Access
Adaptive Graph Completion Based Incomplete Multi-View Clustering
222
Citations
58
References
2020
Year
Graph SparsityGraph Representation LearningMachine LearningEngineeringGraph CompletionUnsupervised Machine LearningGraph ProcessingRepresentation LearningData ScienceData MiningPattern RecognitionInformation ImbalanceComputational GeometryKnowledge DiscoveryAdaptive Graph CompletionComputer ScienceDeep LearningGraph TheoryBusinessGraph AnalysisGraph Neural Network
In real-world applications, it is often that the collected multi-view data are incomplete, i.e., some views of samples are absent. Existing clustering methods for incomplete multi-view data all focus on obtaining a common representation or graph from the available views but neglect the hidden information of missing views and information imbalance of different views. To solve these problems, a novel method, called adaptive graph completion based incomplete multi-view clustering (AGC_IMC), is proposed in this paper. Specifically, AGC_IMC develops a joint framework for graph completion and consensus representation learning, which mainly contains three components, i.e., within-view preservation, between-view inferring, and consensus representation learning. To reduce the negative influence of information imbalance, AGC_IMC introduces some adaptive weights to balance the importance of different views during the consensus representation learning. Importantly, AGC_IMC has the potential to recover the similarity graphs of all views with the optimal cluster structure, which encourages it to obtain a more discriminative consensus representation. Experimental results on five well-known datasets show that AGC_IMC significantly outperforms the state-of-the-art methods.
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