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Evolutionary Dynamics of Information Diffusion Over Social Networks

机译:社交网络上信息扩散的演化动力学

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Current social networks are of extremely large-scale generating tremendous information flows at every moment. How information diffuses over social networks has attracted much attention from both industry and academics. Most of the existing works on information diffusion analysis are based on machine learning methods focusing on social network structure analysis and empirical data mining. However, the network users' decisions, actions, and socio-economic interactions are generally ignored by most of existing works. In this paper, we propose an evolutionary game theoretic framework to model the dynamic information diffusion process in social networks. Specifically, we derive the information diffusion dynamics in complete networks, uniform degree, and nonuniform degree networks, with the highlight of two special networks, the Erdős–Rényi random network and the Barabási–Albert scale-free network. We find that the dynamics of information diffusion over these three kinds of networks are scale-free and all the three dynamics are same with each other when the network scale is sufficiently large. To verify our theoretical analysis, we perform simulations for the information diffusion over synthetic networks and real-world Facebook networks. Moreover, we also conduct an experiment on a Twitter hashtags dataset, which shows that the proposed game theoretic model can well fit and predict the information diffusion over real social networks.
机译:当前的社交网络规模巨大,每时每刻都会产生巨大的信息流。信息在社交网络上的传播方式已引起行业和学术界的广泛关注。现有的有关信息扩散分析的大多数工作都是基于专注于社交网络结构分析和经验数据挖掘的机器学习方法。但是,大多数现有作品通常都忽略了网络用户的决策,行动和社会经济互动。在本文中,我们提出了一个演化博弈理论框架来对社交网络中的动态信息传播过程进行建模。具体而言,我们以两个特殊网络(Erdős-Rényi随机网络和Barabási-Albert无标度网络)为重点,推导了完整网络,均匀度和非均匀度网络中的信息传播动力学。我们发现,当网络规模足够大时,这三种网络上信息传播的动力学是无尺度的,并且这三种动力学都是相同的。为了验证我们的理论分析,我们对合成网络和真实世界的Facebook网络上的信息扩散进行了模拟。此外,我们还对Twitter的标签数据集进行了实验,结果表明,所提出的游戏理论模型可以很好地拟合和预测信息在真实社交网络上的传播。

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