吉林大学学报(信息科学版) ›› 2023, Vol. 41 ›› Issue (1): 106-111.

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基于 SIS 模型的群体社交网络舆情演化仿真

路 苗, 门 可, 马永红, 张海瑞, 冯彦成   

  1. (西安医学院 公共卫生学院, 西安 710021)
  • 收稿日期:2022-01-14 出版日期:2023-02-08 发布日期:2023-02-09
  • 通讯作者: 门可(1970— ), 男, 河北安平人, 西安医学院教授, 博士, 主要从事流行病学研究与应用、 公共安全医学防控研究, (Tel)86-17792520146(E-mail)xxxyyy66666@ 126. com。
  • 作者简介:路苗(1990— ), 女, 陕西延安人, 西安医学院讲师, 主要从事营养与食品卫生、 公共卫生管理研究, ( Tel) 86-18647275534(E-mail)lumao970@ 126. com
  • 基金资助:
    陕西省教育厅基金资助项目(21JZ049)

Simulation of Public Opinion Evolution on Social Networking Based on SIS Model

LU Miao, MEN Ke, MA Yonghong, ZHANG Hairui, FENG Yancheng   

  1. (School of Public Health, Xi'an Medical University, Xi'an 710021, China)
  • Received:2022-01-14 Online:2023-02-08 Published:2023-02-09

摘要: 针对群体社交网络舆情演化时, 目前方法获取关键节点中的数据较为困难, 导致无法准确获得舆情传播次数、 搜索指数、 达到舆情峰值所用时间等参数, 存在演化精度低的问题, 提出基于聚类算法与易感-感染-易感(SIS: Susceptible Infected Susceptible Model)模型的群体社交网络舆情演化仿真方法。 在群体社交网络中采用PageRank 算法获取关键节点, 利用聚类算法对关键节点中的数据聚类进行处理, 在此基础上构建 SIS 模型, 并通过其完成群体社交网络的舆情演化仿真。 实验结果表明, 该方法可准确地获得舆情传播次数、 搜索指数、 达到舆情峰值所用时间等参数, 演化仿真精度高。

关键词: 聚类算法, SIS 模型, 关键节点识别, PageRank 算法, 网络舆情演化

Abstract: During the evolution of public opinion in group social networks, it is difficult for the current methods to obtain the data in key nodes, resulting in the inability to accurately obtain parameters such as the number of public opinion propagation, search index, time to reach the peak of public opinion, and the problem of low evolution accuracy. A simulation method of public opinion evolution in group social network based on clustering algorithm and SIS(Susceptible Infected Susceptible Model) model is proposed. The PageRank algorithm is used to obtain the key nodes, and the clustering algorithm is used to cluster the data in the key nodes. The SIS model is constructed, and the public opinion evolution simulation of the group social network is completed through the SIS model. The experimental results show that the proposed method can accurately obtain the parameters such as the number of public opinion propagation, search index and the time to reach the peak of public opinion, and the evolutionary simulation accuracy is high.

Key words: clustering algorithm, susceptible infected susceptible ( SIS ) model, key node identification, PageRank algorithm, evolution of network public opinion

中图分类号: 

  • TP399