Symmetry and Graph Bi-Regularized Non-Negative Matrix Factorization for Precise Community Detection
Document Type
Article
Publication Date
4-1-2024
Abstract
Community is a fundamental and highly desired pattern in a Large-scale Undirected Network (LUN). Community detection is a vital issue when LUN representation learning is performed. Owing to its good scalability and interpretability, a Symmetric and Non-negative Matrix Factorization model is frequently utilized to tackle this issue. It adopts a unique Latent Factor (LF) matrix for precisely representing LUN's symmetry, which, unfortunately, leads to a reduced LF space that decreases its representation learning ability to a target LUN. Motivated by this discovery, this study proposes a Symmetry and Graph Bi-regularized Non-negative Matrix Factorization (B-NMF) method that: a) leverages multiple LF matrices when representing LUN, thereby boosting the representation learning ability; b) constructs a symmetry regularization term that implies the equality constraint among its multiple LF matrices, thereby illustrating LUN's intrinsic symmetry; and c) incorporates graph regularization into its learning objective, thereby illustrating LUN's local geometry. A theoretical proof is given to theoretically validate B-NMF's convergence ability. The regularization hyperparameters are selected by validating model modularity, thereby guaranteeing B-NMF's practicability in addressing real application issues. Extensive experimental results on ten LUNs from real applications demonstrate that the proposed B-NMF-based community detector significantly outperforms several baseline and state-of-the-art models in achieving highly-accurate community detection results. Note to Practitioners - LUNs are very-commonly seen in real applications like a social network system. Communities in LUNs are vital for various knowledge discovery-related applications. For accurately detecting them, a detector should guarantee its high representation learning ability to a target LUN. To do so, this paper presents a B-NMF model that is able to perform precise representation learning to LUNs, thereby achieving accurate community detection results. In comparison with conventional Symmetric and Non-negative Matrix Factorization-based community detectors, a B-NMF-based community detector enjoys its enlarged latent feature space, which ensures its higher representation ability to a target LUN. It depends on two regularization hyperparameters, which can be selected by performing grid-search on the target LUN via its modularity evaluation. This paper gives the empirical values of B-NMF's regularization hyperparameters based on the parametersensitivity tests on the involved experimental datasets. The proposed B-NMF model is shown to be highly suitable for addressing community detection and clustering tasks on LUNs from real applications.
Identifier
85149372522 (Scopus)
Publication Title
IEEE Transactions on Automation Science and Engineering
External Full Text Location
https://doi.org/10.1109/TASE.2023.3240335
e-ISSN
15583783
ISSN
15455955
First Page
1406
Last Page
1420
Issue
2
Volume
21
Grant
62272078
Fund Ref
National Natural Science Foundation of China
Recommended Citation
Liu, Zhigang; Luo, Xin; and Zhou, Mengchu, "Symmetry and Graph Bi-Regularized Non-Negative Matrix Factorization for Precise Community Detection" (2024). Faculty Publications. 550.
https://digitalcommons.njit.edu/fac_pubs/550