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Microscopic Evolution of Social Networks

机译:社交网络的微观演变

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We present a detailed study of network evolution by analyzing four large online social networks with full temporal information about node and edge arrivals. For the first time at such a large scale, we study individual node arrival and edge creation processes that collectively lead to macroscopic properties of networks. Using a methodology based on the maximum-likelihood principle, we investigate a wide variety of network formation strategies, and show that edge locality plays a critical role in evolution of networks. Our findings supplement earlier network models based on the inherently non-local preferential attachment.Based on our observations, we develop a complete model of network evolution, where nodes arrive at a prespecified rate and select their lifetimes. Each node then independently initiates edges according to a "gap" process, selecting a destination for each edge according to a simple triangle-closing model free of any parameters. We show analytically that the combination of the gap distribution with the node lifetime leads to a power law out-degree distribution that accurately reflects the true network in all four cases. Finally, we give model parameter settings that allow automatic evolution and generation of realistic synthetic networks of arbitrary scale.
机译:通过分析四个大型在线社交网络,其中包含有关节点和边缘到达的完整时间信息,我们对网络演化进行了详细研究。在如此大规模的环境下,我们首次研究了单个节点的到达和边缘创建过程,这些过程共同导致了网络的宏观特性。使用基于最大似然原理的方法,我们研究了各种各样的网络形成策略,并表明边缘局部性在网络演化中起着至关重要的作用。我们的发现对基于固有的非本地优先附件的早期网络模型进行了补充。 根据我们的观察,我们开发了一个完整的网络演进模型,其中节点以预先指定的速率到达并选择其生存期。然后,每个节点根据“间隙”过程独立启动边缘,根据没有任何参数的简单三角形闭合模型为每个边缘选择目的地。我们通过分析表明,间隙分布与节点寿命的组合会导致幂律出度分布,在所有四种情况下都能准确反映出真实的网络。最后,我们给出模型参数设置,以允许自动演化和生成任意规模的逼真的合成网络。

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