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Modeling the Spread of Influence for Independent Cascade Diffusion Process in Social Networks

机译:建模影响社交网络独立级联扩散过程的影响

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Modeling the spread of influence in online social networks is important for predicting the influence of individuals and better understanding many scenarios in social networks, such as the influence maximization problem. The previous work on modeling the spread of influence makes the assumption that the statuses of nodes in a network are independent of each other, which is apparently not correct for social networks. The goal of this work is to derive an accurate mathematical model to characterize the spread of influence for the independent cascade diffusion process in online social networks. Specifically, we apply the susceptible-infected-recovered epidemic model from epidemiology to characterize the independent cascade diffusion process and derive a general mathematical framework. To approximate the complex spatial dependence among nodes in a network, we propose a Markov model to predict the spread of influence. Through the extensive simulation study over several generated topologies and a real coauthorship network, we show that our designed Markov model has much better performance than the existing independent model in predicting the influence of individuals in online social networks.
机译:建模在线社交网络的影响蔓延对于预测个人的影响以及更好地了解社交网络中的许多情景,例如影响最大化问题。以前关于建模影响传播的工作使得假设网络中的节点的状态彼此独立,这显然不正确地对社交网络。这项工作的目标是得出准确的数学模型,以表征在线社交网络中的独立级联扩散过程的影响。具体而言,我们应用来自流行病学的敏感感染恢复的流行病模型,以表征独立级联扩散过程并导出一般的数学框架。为了近似网络中节点之间的复杂空间依赖性,我们提出了马尔可夫模型来预测影响的传播。通过若干生成的拓扑和真实共同努力网络的广泛模拟研究,我们表明我们所设计的马尔可夫模型比现有的独立模型更好地预测在线社交网络中个人的影响。

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