Non-altering time scales for aggregation of dynamic networks into series of graphs

Yannick Léo, C. Crespelle, E. Fleury
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引用次数: 22

Abstract

Many dynamic networks coming from real-world contexts are link streams, i.e. a finite collection of triplets (u,v,t) where u and v are two nodes having a link between them at time t. A great number of studies on these objects start by aggregating the data on disjoint time windows of length Δ in order to obtain a series of graphs on which are made all subsequent analyses. Here we are concerned with the impact of the chosen Δ on the obtained graph series. We address the fundamental question of knowing whether a series of graphs formed using a given Δ faithfully describes the original link stream. We answer the question by showing that such dynamic networks exhibit a threshold for Δ, which we call the saturation scale, beyond which the properties of propagation of the link stream are altered, while they are mostly preserved before. We design an automatic method to determine the saturation scale of any link stream, which we apply and validate on several real-world datasets.
动态网络聚合成一系列图的非改变时间尺度
许多来自现实环境的动态网络是链接流,即三元组(u,v,t)的有限集合,其中u和v是两个节点,它们之间在时间t上有一个链接。对这些对象的大量研究首先是在长度为Δ的不相交的时间窗口上聚合数据,以获得一系列图,并在这些图上进行所有后续分析。这里我们关注的是所选Δ对得到的图序列的影响。我们解决了一个基本问题,即知道使用给定Δ形成的一系列图是否忠实地描述了原始链接流。我们通过显示这种动态网络表现出Δ的阈值来回答这个问题,我们称之为饱和尺度,超过这个阈值,链接流的传播属性就会改变,而它们大部分都保留在之前。我们设计了一种自动方法来确定任何链接流的饱和尺度,我们应用并验证了几个真实世界的数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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