F‐SWIR: Rumor Fick‐spreading model considering fusion information decay in social networks

Weimin Li, Dingmei Wei, Xiaokang Zhou, Shaohua Li, Qun Jin
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引用次数: 2

Abstract

The spread of rumors has a major negative impact on social stability. Traditional rumor spreading models are mostly based on infectious disease models and do not consider the influence of individual differences and the network structure on rumor spreading. In this paper, we propose a rumor Fick‐spreading model that integrates information decay in social networks. The dissemination of rumors in social networks is random and uncertain and is affected by the dissemination capabilities of individuals and the network environment. The rumor Fick‐transition coefficient and Fick‐transition gradient are defined to determine the influence of the individual transition capacity and the network environment on rumor propagation, respectively. The Fick‐state transition probability is used to describe the probability of change of an individual's state. Moreover, an information decay function is defined to characterize the self‐healing probability of individuals. According to the different roles and reactions of users during rumor dissemination, the user state and the rumor dissemination rules among users are refined, and the influence of the network structure on the rumor dissemination is ascertained. The experimental results demonstrate that the proposed model outperforms other rumor spread models.
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F - SWIR:考虑融合信息衰减的谣言传播模型
谣言的传播对社会稳定有很大的负面影响。传统的谣言传播模型大多基于传染病模型,没有考虑个体差异和网络结构对谣言传播的影响。在本文中,我们提出了一个整合社交网络中信息衰减的谣言传播模型。谣言在社交网络中的传播具有随机性和不确定性,受个人传播能力和网络环境的影响。定义谣言的Fick - transition系数和Fick - transition梯度,分别确定个体转移能力和网络环境对谣言传播的影响。Fick - state转移概率用于描述个体状态变化的概率。此外,定义了一个信息衰减函数来表征个体的自愈概率。根据用户在谣言传播过程中的不同角色和反应,提炼用户状态和用户间的谣言传播规律,确定网络结构对谣言传播的影响。实验结果表明,该模型优于其他谣言传播模型。
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