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Unsupervised community detection in attributed networks based on mutual information maximization

Urheber*innen

Zhu,  Junyou
External Organizations;

Li,  Xianghua
External Organizations;

Gao,  Chao
External Organizations;

Wang,  Zhen
External Organizations;

/persons/resource/Juergen.Kurths

Kurths,  Jürgen
Potsdam Institute for Climate Impact Research;

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Zitation

Zhu, J., Li, X., Gao, C., Wang, Z., Kurths, J. (2021): Unsupervised community detection in attributed networks based on mutual information maximization. - New Journal of Physics, 23, 113016.
https://doi.org/10.1088/1367-2630/ac2fbd


Zitierlink: https://publications.pik-potsdam.de/pubman/item/item_26714
Zusammenfassung
Community detection is of great significance for understanding network functions and behaviors. With the successful application of deep learning in network-based analyses, recent studies have turned to utilizing graph convolutional networks (GCNs) to this problem due to their capability in capturing network attributes. Nevertheless, most existing GCN-based community detection approaches are semi-supervised and local structure-aware, even though community detection is an unsupervised learning problem essentially. In this paper, we develop a novel GCN method for unsupervised community detection under the framework of mutual information (MI) maximization, called UCDMI. Specifically, a novel MI maximization mechanism is developed to capture more fine-grained information of the global network structure in an unsupervised manner. Moreover, a new aggregation function is proposed for GCN to distinguish the importance between different neighboring nodes, which enables our method to identify more high-quality node representations and improve the community detection performance. Our extensive experiments demonstrate the effectiveness of our proposed UCDMI compared with several state-of-the-art community detection methods.