posted on 2020-03-26, 13:28authored byLiang Jiang, Leilei Shi, Lu Liu, Jingjing Yao, Bo Yuan, Yongjun Zheng
Internet of People (IoP), which focuses on personal information collection by a wide range of the mobile applications, is the next frontier for Internet of Things. Nowadays, people become more and more dependent on the Internet, increasingly receiving and sending information on social networks (e.g., Twitter, etc.); thus social networks play a decisive role in IoP. Therefore, community discovery has emerged as one of the most challenging problems in social networks analysis. To this end, many algorithms have been proposed to detect communities in static networks. However, microblogging social networks are extremely dynamic in both content distribution and topological structure. In this paper, we propose a model for efficient evolutionary user interest community discovery which employs a nature-inspired genetic algorithm to improve the quality of community discovery. Specifically, a preprocessing method based on hypertext induced topic search improves the quality of initial users and posts, and a label propagation method is used to restrict the conditions of the mutation process to further improve the efficiency and effectiveness of user interest community detection. Finally, the experiments on the real datasets validate the effectiveness of the proposed model.
History
Citation
IEEE Internet of Things Journal, Volume 6, Issue: 6, Dec. 2019
Author affiliation
Department of Informatics
Version
AM (Accepted Manuscript)
Published in
IEEE Internet of Things Journal
Volume
6
Issue
6
Pagination
9226 - 9236
Publisher
Institute of Electrical and Electronics Engineers (IEEE)