进化社会网络中预测社区行为的框架

Georgia Koloniari, Georgios Evangelidis, Nikolaos Sachpenderis, Ioannis Milonas
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引用次数: 1

摘要

本文的目标是提出一个完整的框架来解决在不断发展的社会网络中预测社区行为的问题。该框架包含了社区检测、分析和行为预测所需的所有步骤。我们的方法是基于多维时间序列来建模社区的演变,这些时间序列描述了每个社区的属性随时间的变化,包括结构和基于内容的变化。该预测框架基于对多维时间序列的规则发现,因此可以根据迄今为止社区属性演变中出现的模式来预测未来的行为。最后,利用网络社区行为之间的相似性,将其多维时间序列用于社区聚类。因此,规则发现还可以结合出现在社区集群和网络级别上的全局规则,从而发现表征网络中所有社区的全局行为模式。
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A Framework for Predicting Community Behavior in Evolving Social Networks
The goal of this paper is to propose a complete framework for addressing the problem of predicting communities behavior in evolving social networks. The framework encompasses all steps required for community detection, analysis and behavior prediction. Our approach is based on modeling community evolution by multidimensional time series that describe the changes of each community's properties, both structural and content-based, through time. The prediction framework is based on rule discovery upon the multidimensional time series, so that based on patterns that appear in the evolution of a community's property so far, future behavior can be predicted. Finally, exploiting the similarity between the behavior of a network's communities, their multidimensional time series will be used for community clustering. Thus, rule discovery can also incorporate global rules that appear in clusters of communities as well as on the network level, so as to discover global behavior patterns that characterize all the communities of a network.
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