4.5 Article

Community detection based on first passage probabilities

期刊

PHYSICS LETTERS A
卷 390, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.physleta.2020.127099

关键词

Community detection; Random walk; First passage probability; Hierarchical clustering; Modularity

资金

  1. National Natural Science Foundation of China [11871004, 11922102]

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The study introduces a novel community detection algorithm called FPPM, which incorporates complete structural information within the maximal step length using a new similarity measure. Numerical simulations show that FPPM outperforms several classic algorithms on synthetic benchmarks and real-world networks, especially those with weak community structures.
Community detection is of fundamental significance for understanding topology characters and spreading dynamics on complex networks. While random walk is widely used in previous algorithms, there still exist two major defects: (i) the maximal length of random walk in some methods is too large to distinguish different communities; (ii) the useful community information at all other step lengths are missed if using a pre-assigned maximal length. Here we propose a novel community detection algorithm named as First Passage Probability Method (FPPM), equipped with a new similarity measure that incorporates the complete structural information within the maximal step length. The diameter of the network is chosen as an appropriate boundary of random walks, which is adaptive to different networks. Numerical simulations show that FPPM performs best compared to several classic algorithms on both synthetic benchmarks and real-world networks, especially those with weak community structures. (c) 2020 Elsevier B.V. All rights reserved.

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