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Inferring Information Propagation over Online Social Networks: Edge Asymmetry and Flow Tendency

机译:在线社交网络推断信息传播:边缘不对称和流动趋势

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Inferring the underlying information propagation over online social networks is important because it leads to new insights and enables forecasting, as well as influencing information propagation. In this paper, we analyze propagation processes in online social networks, when only limited details of propagation are available. We use data crawled from Chinese largest recommendation social network -- Douban Network, and study how the information propagates through the user relationship network of Douban. By using the users' follow relationship information, and time sequence of registering for participation in events, we build the potential propagation paths of events. After analyzing the propagation processes of 30,778 events in which about 1.47 million users are involved, we observe the statistical characteristics of propagation paths of those events, including the different types of participants and size distribution of connected participants. Further, we find that information propagation between node pairs are asymmetric. Moreover, based on the asymmetric property between node pairs, we propose a concept -- Information Potential Energy, that describes the capability that nodes disseminate information over a network. Finally, we propose a Flow Shell (FS) model that can efficiently and correctly calculate the nodes' Information Potential Energy, and validate it.
机译:推断在线社交网络上的潜在信息传播是重要的,因为它导致新的见解和启用预测,以及影响信息传播。在本文中,我们在在线社交网络中分析传播过程,只有在线传播的有限细节。我们使用从中国最大的推荐社交网络 - Douban网络逐步爬行的数据,并研究信息如何通过辅向的用户关系网络传播。通过使用用户的遵循关系信息和注册参与活动的时间序列,我们构建了事件的潜在传播路径。在分析了30,778个事件的传播过程之后,其中涉及约1.47亿用户,我们观察这些事件的传播路径的统计特征,包括所连接参与者的不同类型的参与者和大小分布。此外,我们发现节点对之间的信息传播是不对称的。此外,基于节点对之间的不对称性,我们提出了一种概念 - 信息势能,它描述了节点通过网络传播信息的能力。最后,我们提出了一种流壳(FS)模型,可以有效地和正确地计算节点信息势能,并验证。

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