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Network Analysis

Fast Community Detection in Dynamic and Heterogeneous Networks

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Pages 487-500 | Received 23 Oct 2022, Accepted 24 Jun 2023, Published online: 05 Sep 2023
 

Abstract

Dynamic heterogeneous networks describe the temporal evolution of interactions among nodes and edges of different types. While there is a rich literature on finding communities in dynamic networks, the application of these methods to dynamic heterogeneous networks can be inappropriate, due to the involvement of different types of nodes and edges and the need to treat them differently. In this article, we propose a statistical framework for detecting common communities in dynamic and heterogeneous networks. Under this framework, we develop a fast community detection method called DHNet that can efficiently estimate the community label as well as the number of communities. An attractive feature of DHNet is that it does not require the number of communities to be known a priori, a common assumption in community detection methods. While DHNet does not require any parametric assumptions on the underlying network model, we show that the identified label is consistent under a time-varying heterogeneous stochastic block model with a temporal correlation structure and edge sparsity. We further illustrate the utility of DHNet through simulations and an application to review data from Yelp, where DHNet shows improvements both in terms of accuracy and interpretability over alternative solutions. Supplementary materials for this article are available online.

Acknowledgement

We are very grateful to three anonymous referees, an associate editor, and the Editor for their valuable comments that have greatly improved the manuscript.

Disclosure Statement

No potential conflict of interest was reported by the author(s).

Additional information

Funding

Dr. Zhang’s research is supported by NSF DMS-2015190 and DMS-2326893. Dr. Dai’s research is supported by the National Natural Science Foundation of China (Grant No. NSFC 11901573, 12171033) and the Beijing Natural Science Foundation (Z200001).

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