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Incomplete Multi-view Clustering via Prototype-based Imputation

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In this paper, we study how to achieve two characteristics highly-expected by incomplete multi-view clustering (IMvC). Namely, i) instance commonality refers to that within-cluster instances should share a common pattern, and ii) view versatility refers to that cross-view samples should own view-specific patterns. To this end, we design a novel dual-stream model which employs a dual attention layer and a dual contrastive learning loss to learn view-specific prototypes and model the sample-prototype relationship. When the view is missed, our model performs data recovery using the prototypes in the missing view and the sample-prototype relationship inherited from the observed view. Thanks to our dual-stream model, both cluster- and view-specific information could be captured, and thus the instance commonality and view versatility could be preserved to facilitate IMvC. Extensive experiments demonstrate the superiority of our method on six challenging benchmarks compared with 11 approaches. The code will be released.

Haobin Li, Yunfan Li, Mouxing Yang, Peng Hu, Dezhong Peng, Xi Peng• 2023

Related benchmarks

TaskDatasetResultRank
Multi-view ClusteringLandUse-21
ACC20.33
69
Multi-view ClusteringNoisyMNIST
Accuracy88.8
34
Multi-view Clustering100LEAVES
Accuracy0.5154
30
Multi-view ClusteringHdigit
ACC93.17
30
Multi-view ClusteringCaltech101 20
ACC33.16
30
ClusteringHandwritten (test)
ACC85.92
23
Multi-view ClusteringALOI 100
ACC26.15
14
ClusteringMNIST-USPS M/S = 2:1
Accuracy0.912
10
ClusteringMNIST-USPS M/S = 1:1
Accuracy87.3
10
ClusteringMNIST-USPS M/S = 1:2
ACC84.8
10
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