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The optimal window size for analysing longitudinal networks

机译:分析纵向网络的最佳窗口大小

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摘要

The time interval between two snapshots is referred to as the window size. A given longitudinal network can be analysed from various actor-level perspectives, such as exploring how actors change their degree centrality values or participation statistics over time. Determining the optimal window size for the analysis of a given longitudinal network from different actor-level perspectives is a well-researched network science problem. Many researchers have attempted to develop a solution to this problem by considering different approaches; however, to date, no comprehensive and well-acknowledged solution that can be applied to various longitudinal networks has been found. We propose a novel approach to this problem that involves determining the correct window size when a given longitudinal network is analysed from different actor-level perspectives. The approach is based on the concept of actor-level dynamicity, which captures variability in the structural behaviours of actors in a given longitudinal network. The approach is applied to four real-world, variable-sized longitudinal networks to determine their optimal window sizes. The optimal window length for each network, determined using the approach proposed in this paper, is further evaluated via time series and data mining methods to validate its optimality. Implications of this approach are discussed in this article.
机译:两个快照之间的时间间隔称为窗口大小。一个给定的纵向网络可以从各个参与者级别的角度进行分析,例如探索参与者如何随时间改变其学位中心度值或参与统计。从不同的参与者级别的角度确定用于分析给定纵向网络的最佳窗口大小是一个经过充分研究的网络科学问题。许多研究人员已尝试通过考虑不同的方法来解决该问题。然而,迄今为止,还没有找到可以应用于各种纵向网络的全面且广为人知的解决方案。我们提出了一种解决此问题的新颖方法,其中涉及从不同的演员级别的角度分析给定的纵向网络时确定正确的窗口大小。该方法基于参与者级动态性的概念,该概念捕获了给定纵向网络中参与者的结构行为的可变性。该方法应用于四个现实世界中可变大小的纵向网络,以确定其最佳窗口大小。使用本文提出的方法确定的每个网络的最佳窗口长度将通过时间序列和数据挖掘方法进行进一步评估,以验证其最佳性。本文讨论了这种方法的含义。

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