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Dynamic community detection algorithm based on hyperbolic graph convolution

Weijiang Wu (College of Information Science and Engineering/College of Artificial Intelligence, China University of Petroleum Beijing, Beijing, China) (Beijing Key Laboratory of Petroleum Data Mining, China University of Petroleum Beijing, Beijing, China)
Heping Tan (College of Information Science and Engineering/College of Artificial Intelligence, China University of Petroleum Beijing, Beijing, China) (Beijing Key Laboratory of Petroleum Data Mining, China University of Petroleum Beijing, Beijing, China)
Yifeng Zheng (School of Computer Science, Minnan Normal University, Zhangzhou, China)

International Journal of Intelligent Computing and Cybernetics

ISSN: 1756-378X

Article publication date: 4 July 2024

Issue publication date: 17 July 2024

92

Abstract

Purpose

Community detection is a key factor in analyzing the structural features of complex networks. However, traditional dynamic community detection methods often fail to effectively solve the problems of deep network information loss and computational complexity in hyperbolic space. To address this challenge, a hyperbolic space-based dynamic graph neural network community detection model (HSDCDM) is proposed.

Design/methodology/approach

HSDCDM first projects the node features into the hyperbolic space and then utilizes the hyperbolic graph convolution module on the Poincaré and Lorentz models to realize feature fusion and information transfer. In addition, the parallel optimized temporal memory module ensures fast and accurate capture of time domain information over extended periods. Finally, the community clustering module divides the community structure by combining the node characteristics of the space domain and the time domain. To evaluate the performance of HSDCDM, experiments are conducted on both artificial and real datasets.

Findings

Experimental results on complex networks demonstrate that HSDCDM significantly enhances the quality of community detection in hierarchical networks. It shows an average improvement of 7.29% in NMI and a 9.07% increase in ARI across datasets compared to traditional methods. For complex networks with non-Euclidean geometric structures, the HSDCDM model incorporating hyperbolic geometry can better handle the discontinuity of the metric space, provides a more compact embedding that preserves the data structure, and offers advantages over methods based on Euclidean geometry methods.

Originality/value

This model aggregates the potential information of nodes in space through manifold-preserving distribution mapping and hyperbolic graph topology modules. Moreover, it optimizes the Simple Recurrent Unit (SRU) on the hyperbolic space Lorentz model to effectively extract time series data in hyperbolic space, thereby enhancing computing efficiency by eliminating the reliance on tangent space.

Keywords

Acknowledgements

Funding: This work is funded by the Nature Science Foundation of Fujian Province (No. 2021J011004).

Citation

Wu, W., Tan, H. and Zheng, Y. (2024), "Dynamic community detection algorithm based on hyperbolic graph convolution", International Journal of Intelligent Computing and Cybernetics, Vol. 17 No. 3, pp. 632-653. https://doi.org/10.1108/IJICC-01-2024-0017

Publisher

:

Emerald Publishing Limited

Copyright © 2024, Emerald Publishing Limited

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