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How does information diffuse in large recommendation social networks?

机译:信息如何在大推荐社交网络中传播?

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摘要

This article investigates how information diffuses in Douban, an online social network. First, we analyze properties of the user relationships in Douban, observing its degree distribution, network reciprocity, and degree of separation. Second, we propose a method that infers how the information diffuses through this network. Subsequently, using this method we rebuild possible information diffusion graphs, and make statistical observations of the disconnected properties, size distributions, and diffusion patterns in Douban. Based on our empirical analysis, we found that in most cases, information diffuses with multiple origins in Douban. We attribute this to the two different kinds of influence that lead to the diffusion: internal and external influence. Finally, based on the observations, we propose a novel SID model to formulate the diffusions in online social network environments. In the model, there are n iterations. On each iteration, each non-infected node can be infected, either externally with probability Pex, or internally with probability Pin from each of the nodes it follows that were already infected. Our simulation results reveal that the SID model can flexibly portray the diffusion processes in Douban through adjusting these two probabilities.
机译:本文研究了信息如何在在线社交网络豆瓣中传播。首先,我们分析了豆瓣的用户关系属性,观察其程度分布,网络互惠性和分离程度。其次,我们提出一种推断信息如何通过该网络传播的方法。随后,使用这种方法,我们重建了可能的信息扩散图,并对豆瓣中不连续的特性,尺寸分布和扩散模式进行了统计观察。根据我们的经验分析,我们发现在大多数情况下,信息会在豆瓣中传播,起源多种多样。我们将其归因于导致扩散的两种不同类型的影响:内部影响和外部影响。最后,根据观察结果,我们提出了一种新颖的SID模型,以描述在线社交网络环境中的扩散。在模型中,有n次迭代。在每次迭代中,每个未受感染的节点都可以从外部被感染的每个节点以概率Pex在外部或以概率Pin在内部被感染。我们的仿真结果表明,通过调整这两个概率,SID模型可以灵活地刻画豆瓣的扩散过程。

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