Tracking community evolution in social networks: A survey

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This paper presents a survey of previous studies done on the problem of tracking community evolution over time in dynamic social networks. This problem is of crucial importance in the field of social network analysis. The goal of our paper is to classify existing methods dealing with the issue. We propose a classification of various methods for tracking community evolution in dynamic social networks into four main approaches using as a criterion the functioning principle: the first one is based on independent successive static detection and matching; the second is based on dependent successive static detection; the third is based on simultaneous study of all stages of community evolution; finally, the fourth and last one concerns methods working directly on temporal networks. Our paper starts by giving basic concepts about social networks, community structure and strategies for evaluating community detection methods. Then, it describes the different approaches, and exposes the strengths as well as the weaknesses of each.

论文关键词:Social network,Dynamic network,Dynamic community detection,Community evolution

论文评审过程:Received 31 July 2017, Revised 10 March 2018, Accepted 12 March 2018, Available online 7 April 2018, Version of Record 7 March 2019.

论文官网地址:https://doi.org/10.1016/j.ipm.2018.03.005