Community evolution in dynamic social networks

This paper proposed a framework and an algorithm for identifying communities in dynamic social networks. In order to handle the drawbacks of traditional approaches for social network analysis, we utilize the community similarities and infrequent change of community members combined with community structure optimization to develop a Group-based social community identification model to analyze the change of social interaction network with multiple time steps. According to this model ,we introduced a greed-cut algorithm and depthsearch-first approach and combine them to develop a new algorithm for dynamic social interaction network recognition (called ADSIN). In addition, we conduct experiments on the dataset of Southern Women, the experiment results validate the accuracy and effectiveness of ADSIN. Key words-social network; community recognition; time step; φ

[1]  Michele Fedrizzi,et al.  A Fuzzy Approach to Social Network Analysis , 2009, 2009 International Conference on Advances in Social Network Analysis and Mining.

[2]  Lisa Singh,et al.  Visual Mining of Multi-Modal Social Networks at Different Abstraction Levels , 2007, 2007 11th International Conference Information Visualization (IV '07).

[3]  Huidong Jin,et al.  PutMode: prediction of uncertain trajectories in moving objects databases , 2010, Applied Intelligence.

[4]  Shaojie Qiao,et al.  Parallel Sequential Pattern Mining of Massive Trajectory Data , 2010, Int. J. Comput. Intell. Syst..

[5]  Huidong Jin,et al.  Constrained k-closest pairs query processing based on growing window in crime databases , 2008, 2008 IEEE International Conference on Intelligence and Security Informatics.

[6]  Stephen Chadwick,et al.  The Deep South , 2012 .

[7]  Huidong Jin,et al.  KISTCM: knowledge discovery system for traditional Chinese medicine , 2010, Applied Intelligence.

[8]  L. Freeman Finding Social Groups: A Meta-Analysis of the Southern Women Data , 2003 .