9th International Conference on Communications and Networking in China

Research Article

Multiple evidence fusion based information diffusion model for social network

  • @INPROCEEDINGS{10.4108/icst.chinacom.2014.256385,
        author={Yanan Wang and Jianhua Li and Xiuzhen Chen and Wanyu Huang},
        title={Multiple evidence fusion based information diffusion model for social network},
        proceedings={9th International Conference on Communications and Networking in China},
        publisher={IEEE},
        proceedings_a={CHINACOM},
        year={2015},
        month={1},
        keywords={social network information diffusion d-s evidence reasoning evidence fusion},
        doi={10.4108/icst.chinacom.2014.256385}
    }
    
  • Yanan Wang
    Jianhua Li
    Xiuzhen Chen
    Wanyu Huang
    Year: 2015
    Multiple evidence fusion based information diffusion model for social network
    CHINACOM
    IEEE
    DOI: 10.4108/icst.chinacom.2014.256385
Yanan Wang1, Jianhua Li1, Xiuzhen Chen1,*, Wanyu Huang1
  • 1: Shanghai Jiao Tong University
*Contact email: chenxz@sjtu.edu.cn

Abstract

Study on diffusion behaviors, such as contagion of virus, adoption of production, and information propagation, is one of the hottest topics of social network research. The conventional models usually focus on a particular factor that influences the contagion process. A novel model of diffusion based on multiple behavior evidence fusion is proposed on the analysis of prevalent social network data set, which can simulate the information propagation process with the fitting goodness of 0.79. In this model, impact factors, i.e. the influence between neighborhood, and the activity of user, are taken into account together and fused into combined evidence mass function, which can be used to infer users'forwarding behavior by D-S theory reasoning. Series of experiments tested on the published Enron email data set show that the multiple evidence fusion based diffusion model (MEFDM) is reasonable and feasible in demonstrating the cascading of information in the social network.