基于社区发现的动态网络交互预测

Giulio Rossetti, Riccardo Guidotti, Diego Pennacchioli, D. Pedreschi, F. Giannotti
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引用次数: 22

摘要

由于在线社交服务的日益普及,人与人之间的互动变得越来越容易建立和跟踪。在线社会人类活动产生的数字足迹描述了复杂的、快速发展的、动态的网络。在这种情况下,要解决的最具挑战性的任务之一是预测参与者夫妇之间的未来交互。在这项研究中,我们希望利用网络动态和社区结构来预测哪些是未来更有可能出现的互动。在这种程度上,我们提出了一种监督学习方法,该方法利用在属于同一社区的对节点之间计算的拓扑度量的时间感知预测计算的特征。在实际动态网络上的实验表明,所设计的分析过程能够获得有趣的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interaction prediction in dynamic networks exploiting community discovery
Due to the growing availability of online social services, interactions between people became more and more easy to establish and track. Online social human activities generate digital footprints, that describe complex, rapidly evolving, dynamic networks. In such scenario one of the most challenging task to address involves the prediction of future interactions between couples of actors. In this study, we want to leverage networks dynamics and community structure to predict which are the future interactions more likely to appear. To this extent, we propose a supervised learning approach which exploit features computed by time-aware forecasts of topological measures calculated between pair of nodes belonging to the same community. Our experiments on real dynamic networks show that the designed analytical process is able to achieve interesting results.
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