Xia ZhangZhengyou XiaShengwu XuJingchao Wang
Timely and cost-effective analytics over social network has emerged as a key ingredient for success in many businesses and government endeavors. Community detection is an active research area of relevance to analyze online social network. The problem of selecting a particular community detection algorithm is crucial if the aim is to unveil the community structure of a network. The choice of a given methodology could affect the outcome of the experiments because different algorithms have different advantages and depend on tuning specific parameters. In this paper, we propose a community division model based on the notion of game theory, which can combine advantages of previous algorithms effectively to get a better community classification result. By making experiments on some standard dataset, it verifies that our community detection model based on game theory is valid and better.
Vincenzo MoscatoAntonio PicarielloGiancarlo Sperlí
Yufei LiuDechang PiQiyou Cheng
Mengqin NingJun GongZhipeng Zhou