基于个体属性异质的微博信息超网络传播模型

A Weibo information hypernetwork propagation model based on individual attribute heterogeneity

  • 摘要: 异质网络能够有效建模现实世界的诸多复杂应用场景。基于微博平台个体的多样性,该文提出构建个体属性异质的微博信息超网络模型,模型以用户、话题为两类异质节点,用户参与话题讨论为超边,构建无标度异质超网络模型。在此基础上,结合SEIR传播模型,对异质节点的个体属性进行量化分析,通过元路径方法设计用户影响力、感染率和免疫率的计算方法。此外,通过仿真实验分析不同网络结构下信息传播的动态过程和规律,研究用户影响力、置信度、兴趣价值、信息时效性对该模型信息传播过程的影响。进一步,通过“日本核污水排放”事件验证模型的有效性和准确性。结果表明,该模型能够较为准确地描述真实社交网络中的信息传播趋势和过程。该工作对异质超网络的模型构建及超网络信息传播的研究有一定的借鉴意义,有助于深入研究更复杂多元的信息传播机制。

     

    Abstract: Heterogeneous networks can effectively model various complex real-world application scenarios. Based on the diversity of individuals on the Weibo platform, this paper proposes a heterogeneous Weibo information hypernetwork model that incorporates individual attributes. In this model, users and topics are treated as two types of heterogeneous nodes, while user participation in topic discussions forms hyperedges, resulting in a scale-free heterogeneous hypernetwork model. Building on this framework, the SEIR propagation model is integrated to quantitatively analyze the individual attributes of heterogeneous nodes. Meta-path methods are employed to design calculation approaches for user influence, infection rate, and immunity rate. Furthermore, simulation experiments are conducted to analyze the dynamic processes and patterns of information dissemination across different network structures, investigating the impacts of user influence, confidence levels, interest values, and information timeliness on the dissemination process. Additionally, the validity and accuracy of the model are verified using the case study of the "Japan Nuclear Wastewater Discharge" incident. The results demonstrate that this model effectively captures the trends and processes of information dissemination in real social networks. This work provides valuable insights for research on the model construction of heterogeneous hypernetworks and hypernetwork-based information dissemination, contributing to a deeper understanding of more complex and diverse information propagation mechanisms.

     

/

返回文章
返回