进化网络中的事件检测

Sarvenaz Choobdar, P. Ribeiro, Fernando M A Silva
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引用次数: 10

摘要

本文描述了一种在时间演化的复杂网络中发现和描述重要事件的方法。我们首先根据网络节点在一组局部属性(如度和聚类系数)上的相似性,将网络节点分组成簇。然后,我们随着时间的推移监测这些群体的行为,寻找群体规模上的重大变化。这些事件值得注意,因为它们表明网络中许多节点的位置发生了变化。我们通过提取相应的转换模式来描述这种演变。我们在三个不同的真实网络数据集上检验了我们的方法。实验表明,发现的规则是有意义的,可以描述发生的事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Event detection in evolving networks
This paper describes a methodology for finding and describing significant events in time evolving complex networks. We first group the nodes of the network in clusters, according to their similarity in terms of a set of local properties such as degree and clustering coefficient. We then monitor the behavior of these groups over time, looking for significant changes on the size of the groups. These events are notable since they show that the position of a number of nodes in the network has changed. We describe this evolution by extracting the correspondent transition patterns. We examined our methodology on three different real network datasets. Our experiments show that the discovered rules are significant and can describe the occurring events.
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