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Personalized Influential Community Search in Large Networks: A K-ECC-Based Model

Author

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  • Shi Meng
  • Hao Yang
  • Xijuan Liu
  • Zhenyue Chen
  • Jingwen Xuan
  • Yanping Wu
  • Gengxin Sun

Abstract

Graphs have been widely used to model the complex relationships among entities. Community search is a fundamental problem in graph analysis. It aims to identify cohesive subgraphs or communities that contain the given query vertices. In social networks, a user is usually associated with a weight denoting its influence. Recently, some research is conducted to detect influential communities. However, there is a lack of research that can support personalized requirement. In this study, we propose a novel problem, named personalized influential k-ECC (PIKE) search, which leverages the k-ECC model to measure the cohesiveness of subgraphs and tries to find the influential community for a set of query vertices. To solve the problem, a baseline method is first proposed. To scale for large networks, a dichotomy-based algorithm is developed. To further speed up the computation and meet the online requirement, we develop an index-based algorithm. Finally, extensive experiments are conducted on 6 real-world social networks to evaluate the performance of proposed techniques. Compared with the baseline method, the index-based approach can achieve up to 7 orders of magnitude speedup.

Suggested Citation

  • Shi Meng & Hao Yang & Xijuan Liu & Zhenyue Chen & Jingwen Xuan & Yanping Wu & Gengxin Sun, 2021. "Personalized Influential Community Search in Large Networks: A K-ECC-Based Model," Discrete Dynamics in Nature and Society, Hindawi, vol. 2021, pages 1-10, November.
  • Handle: RePEc:hin:jnddns:5363946
    DOI: 10.1155/2021/5363946
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