Deep multi-view graph clustering with incomplete views

Author:

Chang Kerou1,Zhu Changming1,Miao Duoqian2

Affiliation:

1. Shanghai Maritime University

2. Tongji University

Abstract

Abstract

Deep multi-view graph clustering has made good progress in solving large-scale problems. However, existing deep multi-view graph clustering methods suffer from the following issues: (1) How to combine data processing with multi-view clustering in deep learning, (2) How to learn the local and global information of the graph in deep learning. To this end, a novel method, called deep multi-view graph clustering with the incomplete view (DMVGC-IV), is proposed in this paper, which successfully solves the above two difficulties. Specifically, deep metric learning networks are employed on multiple views to obtain the graph structure. It approximately maintains the semantic distance of data points in the subspace. Then, DMVGC-IV combines global and local structures with a graph-fusion layer. By integrating autoencoder’s reconstruction and multi-view graph learning into a unified framework, our model can jointly optimize the cluster label assignments and embeddings suitable for graph clustering. Experiments use five commonly used multi-view data sets and compare them with five advanced multi-view clustering methods to verify the effectiveness of the proposed method.

Publisher

Research Square Platform LLC

Reference34 articles.

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