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Deep Embedded Multi-view Clustering with Collaborative Training

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Multi-view clustering has attracted increasing attentions recently by utilizing information from multiple views. However, existing multi-view clustering methods are either with high computation and space complexities, or lack of representation capability. To address these issues, we propose deep embedded multi-view clustering with collaborative training (DEMVC) in this paper. Firstly, the embedded representations of multiple views are learned individually by deep autoencoders. Then, both consensus and complementary of multiple views are taken into account and a novel collaborative training scheme is proposed. Concretely, the feature representations and cluster assignments of all views are learned collaboratively. A new consistency strategy for cluster centers initialization is further developed to improve the multi-view clustering performance with collaborative training. Experimental results on several popular multi-view datasets show that DEMVC achieves significant improvements over state-of-the-art methods.

Jie Xu, Yazhou Ren, Guofeng Li, Lili Pan, Ce Zhu, Zenglin Xu• 2020

Related benchmarks

TaskDatasetResultRank
Multi-view ClusteringSynthetic3d
ACC81
26
Multi-view ClusteringYouTubeFace
ACC24.87
10
ClusteringProkaryotic
Accuracy52.45
10
ClusteringMNIST-USPS
Accuracy (ACC)88.58
10
Multi-view ClusteringHdigit
ACC37.38
10
Multi-view ClusteringCIFAR10
ACC43.54
10
Multi-view ClusteringCIFAR100
ACC50.48
10
Multi-view ClusteringCaltech-2V
ACC49.86
6
Multi-view ClusteringCaltech-3V
Accuracy0.5336
6
Multi-view ClusteringCaltech-4V
ACC49.29
6
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