基于正负信息博弈的信息与疫情协同进化传播模型

Yaqiong Wang, Zhiqiang Liu, Guanghui Yuan
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引用次数: 0

摘要

随着移动社交平台的快速发展,网络上出现了大量的正面和负面信息。这些正面信息和负面信息相互影响,共同影响疫情的传播。其中,可信度高的正面信息来源已得到验证,可信度低的负面信息来源模糊。针对网络中正负信息相互竞争的情况,构建网络信息与疫情传播的协同进化传播模型,研究网络信息的动态变化对疫情传播的影响。基于网络信息与疫情传播的协同演化传播模型,采用平均场法分析了传播系统的动态演化过程和阈值,并通过数值模拟实验模拟了网络信息层中不同参数对疫情传播的影响。研究结果表明,网络信息层的正负信息博弈直接影响着疫情的传播过程。
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The co-evolution propagation model of information and epidemic based on positive and negative information game
With the rapid development of mobile social platforms, there is a lot of positive and negative information on the Internet. These positive and negative information influences each other and together affects the epidemic spreading. Among them, the source of positive information with high credibility has been verified, and the source of negative information with low credibility is vague. Aiming at the situation that the positive and negative information in the network competes with each other, this paper constructs the co-evolution spreading model of network information and epidemic spreading to study the effect of the dynamic changes of network information on the epidemic spreading. Based on the co-evolution spreading model of network information and epidemic spreading, the dynamic evolution process and threshold of the spreading system are analyzed using the average field method, and the numerical simulation experiments were used to simulate the influence of different parameters in the network information layer on the epidemic spreading. Our results show that the game of positive and negative information in the network information layer directly affects the epidemic spreading process.
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