跟踪动态信息网络的变化

M. Takaffoli, Justin Fagnan, Farzad Sangi, Osmar R Zaiane
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引用次数: 52

摘要

社会网络分析是一门分析社会结构和信息网络以揭示网络中顶点之间交互模式的学科。大多数社交网络都是动态的,研究这些网络随时间的演变可以深入了解图中节点所表达的个人行为以及节点之间的信息流。在动态网络中,社区是一组紧密相连的节点,受底层人口变化的影响。对群落及其演化的分析有助于确定网络结构特性的变化。我们提出了一个框架,用于建模和检测社区随时间的演变。首先,我们提出的社区匹配算法可以有效地识别和跟踪相似的社区。然后,定义了一系列重要事件和转变,以表征网络在社区和个人方面的演变。我们还提出了稳定性和影响力两个指标来描述个人的积极行为。我们提出了实验来探索安然电子邮件和DBLP数据集上的社区动态。使用从检测到的社区中提取的主题来评估事件,表明我们可以在真实数据集中成功地跟踪社区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tracking changes in dynamic information networks
Social network analysis is a discipline that has emerged to analyze social structures and information networks to uncover patterns of interaction among the vertices in the network. Most social networks are dynamic, and studying the evolution of these networks over time could provide insight into the behavior of individuals expressed by the nodes in the graph and the flow of information among them. In a dynamic network, communities, which are groups of densely interconnected nodes, are affected by changes in the underlying population. The analysis of communities and their evolutions can help determine the shifting structural properties of the networks. We present a framework for modeling and detecting community evolution over time. First, our proposed community matching algorithm efficiently identifies and tracks similar communities over time. Then, a series of significant events and transitions are defined to characterize the evolution of networks in terms of its communities and individuals. We also propose two metrics called stability and influence metrics to describe the active behavior of the individuals. We present experiments to explore the dynamics of communities on the Enron email and DBLP datasets. Evaluating the events using topics extracted from the detected communities demonstrates that we can successfully track communities over time in real datasets.
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