A Survey of Community Detection Approaches: From Statistical Modeling to Deep Learning
Di Jin, Zhizhi Yu, Pengfei Jiao, Shirui Pan, Dongxiao He, Jia Wu,, Philip S. Yu, Weixiong Zhang

TL;DR
This survey comprehensively reviews community detection methods, categorizing them into probabilistic graphical models and deep learning, and introduces benchmark datasets to facilitate future research in network analysis.
Contribution
It provides a unified architecture, a new taxonomy, and benchmark datasets, offering a comprehensive overview and insights into the theoretical and methodological foundations of community detection.
Findings
Classical methods rely on probabilistic graphical models.
Deep learning approaches enable low-dimensional network representations.
Benchmark datasets support evaluation and development of new methods.
Abstract
Community detection, a fundamental task for network analysis, aims to partition a network into multiple sub-structures to help reveal their latent functions. Community detection has been extensively studied in and broadly applied to many real-world network problems. Classical approaches to community detection typically utilize probabilistic graphical models and adopt a variety of prior knowledge to infer community structures. As the problems that network methods try to solve and the network data to be analyzed become increasingly more sophisticated, new approaches have also been proposed and developed, particularly those that utilize deep learning and convert networked data into low dimensional representation. Despite all the recent advancement, there is still a lack of insightful understanding of the theoretical and methodological underpinning of community detection, which will be…
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Taxonomy
TopicsComplex Network Analysis Techniques · Advanced Clustering Algorithms Research · Data Visualization and Analytics
