基于遗传的社交网络扩散新模型

Liangxiu Li, Shenghong Li, Xiuzhen Chen
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引用次数: 5

摘要

各种随机扩散模型用于模拟网络中的扩散过程,但它们要么关注单个对象的扩散,要么关注排他对象的扩散。本文介绍了一种基于遗传的扩散模型(GDM)。它可以模拟多个具有不同关系的对象在社交网络中传播。为了模拟信息扩散,GDM将网络中的个体视为“染色体”,将传播的信息视为“基因”,并规定了染色体之间相互作用的规则来模拟个体之间的信息相互作用。我们发现,当对单个消息在网络中传播建模时,GDM与独立级联模型的SI (vulnerable - infected)情况完全相同。此外,GDM还可以模拟许多其他的传播过程,包括竞争过程。通过应用GDM模拟不同情况下的信息扩散过程,我们得到了许多有趣的结果,包括扩散过程中的“断点”。一条信息的扩散规模在此之前几乎没有增加,但在此之后迅速增加。因此,如果我们想要限制一条信息的扩散规模,在其“断点”之前阻断传播路径将是非常有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new genetics-based diffusion model for social networks
A variety of stochastic diffusion models are used to simulate spreading processes in networks, but they focus on either one single object or exclusive objects spreading. In this paper, a genetics-based diffusion model (GDM) is introduced as a general model. It can simulate multiple objects with different relationships spreading in social networks. To simulate information diffusion, GDM regards an individual in a network as a ‘chromosome’, and a message that spreads in as a ‘gene’, and specifies a rule for the interactions between chromosomes to model the information interactions between individuals. We find that when modeling one single message spreading in networks, GDM would be exactly the same with the SI (Susceptible-Infected) case of independent cascade model. Besides, GDM can model many other cases of spreading processes, including competing processes. By applying GDM to simulating different cases of information diffusion process, we get many interesting results, including ‘break point’ in a diffusion process. The diffusion scale of a piece of information hardly increases before this point, but increases rapidly after it. So if we want to limit the diffusion scale of a piece of information, it would be very effective to block the propagation paths before its ‘break point’.
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