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Constrained Symmetric Non-Negative Matrix Factorization with Deep Autoencoders for Community Detection

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journal contribution
posted on 2025-03-04, 11:57 authored by Wei Zhang, Shanshan Yu, Ling Wang, Wei Guo, Man-Fai Leung
Recently, community detection has emerged as a prominent research area in the analysis of complex network structures. Community detection models based on non-negative matrix factorization (NMF) are shallow and fail to fully discover the internal structure of complex networks. Thus, this article introduces a novel constrained symmetric non-negative matrix factorization with deep autoencoders (CSDNMF) as a solution to this issue. The model possesses the following advantages: (1) By integrating a deep autoencoder to discern the latent attributes bridging the original network and community assignments, it adeptly captures hierarchical information. (2) Introducing a graph regularizer facilitates a thorough comprehension of the community structure inherent within the target network. (3) By integrating a symmetry regularizer, the model’s capacity to learn undirected networks is augmented, thereby facilitating the precise detection of symmetry within the target network. The proposed CSDNMF model exhibits superior performance in community detection when compared to state-of-the-art models, as demonstrated by eight experimental results conducted on real-world networks.

History

Refereed

  • Yes

Volume

12

Issue number

10

Page range

1554-1554

Publication title

Mathematics

ISSN

2227-7390

Publisher

MDPI AG

File version

  • Published version

Language

  • eng

Item sub-type

Journal Article

Affiliated with

  • School of Computing and Information Science Outputs