Hierarchical community detection with applications to real-world network analysis

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摘要

Community structure is ubiquitous in real-world networks and community detection is of fundamental importance in many applications. Although considerable efforts have been made to address the task, the objective of seeking a good trade-off between effectiveness and efficiency, especially in the case of large-scale networks, remains challenging. This paper explores the nature of community structure from a probabilistic perspective and introduces a novel community detection algorithm named as PMC, which stands for probabilistically mining communities, to meet the challenging objective. In PMC, community detection is modeled as a constrained quadratic optimization problem that can be efficiently solved by a random walk based heuristic. The performance of PMC has been rigorously validated through comparisons with six representative methods against both synthetic and real-world networks with different scales. Moreover, two applications of analyzing real-world networks by means of PMC have been demonstrated.

论文关键词:Graph mining,Community detection,Link analysis,Social network analysis

论文评审过程:Received 18 January 2011, Revised 8 September 2012, Accepted 10 September 2012, Available online 18 September 2012.

论文官网地址:https://doi.org/10.1016/j.datak.2012.09.002