Title
Deep Multiple Non-Negative Matrix Factorization For Multi-View Clustering
Abstract
Multi-view clustering aims to group similar samples into the same clusters and dissimilar samples into different clusters by integrating heterogeneous information from multi-view data. Non-negative matrix factorization (NMF) has been widely applied to multi-view clustering owing to its interpretability. However, most NMF-based algorithms only factorize multi-view data based on the shallow structure, neglecting complex hierarchical and heterogeneous information in multi-view data. In this paper, we propose a deep multiple non-negative matrix factorization (DMNMF) framework based on AutoEncoder for multi-view clustering. DMNMF consists of multiple Encoder Components and Decoder Components with deep structures. Each pair of Encoder Component and Decoder Component are used to hierarchically factorize the input data from a view for capturing the hierarchical information, and all Encoder and Decoder Components are integrated into an abstract level to learn a common low-dimensional representation for combining the heterogeneous information across multi-view data. Furthermore, graph regularizers are also introduced to preserve the local geometric information of each view. To optimize the proposed framework, an iterative updating scheme is developed. Besides, the corresponding algorithm called MVC-DMNMF is also proposed and implemented. Extensive experiments on six benchmark datasets have been conducted, and the experimental results demonstrate the superior performance of our proposed MVC-DMNMF for multi-view clustering compared to other baseline algorithms.
Year
DOI
Venue
2021
10.3233/IDA-195075
INTELLIGENT DATA ANALYSIS
Keywords
DocType
Volume
Deep non-negative matrix factorization, multi-view clustering, deep AutoEncoder, graph regularization constraints
Journal
25
Issue
ISSN
Citations 
2
1088-467X
0
PageRank 
References 
Authors
0.34
0
4
Name
Order
Citations
PageRank
Guowang Du111.36
Lihua Zhou2187.71
Kevin Lü301.35
Haiyan Ding400.34