\begin{document}${\mu} $\end{document} to be sent out; 2) or forwarding the information already on the "personal page list" with probability \begin{document}$ (1-{\mu}) $\end{document} . Based on the assumptions, the information popularity model is proposed. Finally, the model is simulated. The simulation results show that the model can reproduce some features of real social network data, and the popularity of information is related to the network structure. By solving the model equation, the results of theoretical prediction are consistent with the simulation analyses and actual data."> - 必威体育下载

Search

Article

x

留言板

姓名
邮箱
手机号码
标题
留言内容
验证码

downloadPDF
Citation:

    Wu Lian-Ren, Li Jin-Jie, Qi Jia-Yin
    PDF
    HTML
    Get Citation
    Metrics
    • Abstract views:6982
    • PDF Downloads:64
    • Cited By:0
    Publishing process
    • Received Date:02 November 2018
    • Accepted Date:17 January 2019
    • Available Online:23 March 2019
    • Published Online:05 April 2019

      返回文章
      返回
        Baidu
        map