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Self-Supervised Discriminative Feature Learning for Deep Multi-View Clustering

About

Multi-view clustering is an important research topic due to its capability to utilize complementary information from multiple views. However, there are few methods to consider the negative impact caused by certain views with unclear clustering structures, resulting in poor multi-view clustering performance. To address this drawback, we propose self-supervised discriminative feature learning for deep multi-view clustering (SDMVC). Concretely, deep autoencoders are applied to learn embedded features for each view independently. To leverage the multi-view complementary information, we concatenate all views' embedded features to form the global features, which can overcome the negative impact of some views' unclear clustering structures. In a self-supervised manner, pseudo-labels are obtained to build a unified target distribution to perform multi-view discriminative feature learning. During this process, global discriminative information can be mined to supervise all views to learn more discriminative features, which in turn are used to update the target distribution. Besides, this unified target distribution can make SDMVC learn consistent cluster assignments, which accomplishes the clustering consistency of multiple views while preserving their features' diversity. Experiments on various types of multi-view datasets show that SDMVC outperforms 14 competitors including classic and state-of-the-art methods. The code is available at https://github.com/SubmissionsIn/SDMVC.

Jie Xu, Yazhou Ren, Huayi Tang, Zhimeng Yang, Lili Pan, Yang Yang, Xiaorong Pu, Philip S. Yu, Lifang He• 2021

Related benchmarks

TaskDatasetResultRank
ClusteringDHA
Accuracy80.2
91
ClusteringBDGP
Accuracy98.5
12
ClusteringDIGIT
ACC0.998
12
ClusteringNoisy Amazon
ACC55.4
12
ClusteringRGB-D
Accuracy44.1
12
ClusteringNoisyBDGP
Accuracy89.6
12
ClusteringCaltech
ACC85.3
12
ClusteringCOIL
ACC97
12
ClusteringNoisyDIGIT
Accuracy75.8
12
ClusteringNoisyCOIL
ACC81
12
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