Morrison D, Bedinger M, Beevers L, McClymont K
School of Energy, Geosciences, Infrastructure and Society, Heriot-Watt University, William Arrol Building, Room W.A. 3.36/3.37, 2 Third Gait, Currie, Edinburgh, EH14 4AS UK.
Appl Netw Sci. 2022;7(1):50. doi: 10.1007/s41109-022-00476-w. Epub 2022 Jul 14.
Network analysis is a useful tool to analyse the interactions and structure of graphs that represent the relationships among entities, such as sectors within an urban system. Connecting entities in this way is vital in understanding the complexity of the modern world, and how to navigate these complexities during an event. However, the field of network analysis has grown rapidly since the 1970s to produce a vast array of available metrics that describe different graph properties. This diversity allows network analysis to be applied across myriad research domains and contexts, however widespread applications have produced polysemic metrics. Challenges arise in identifying which method of network analysis to adopt, which metrics to choose, and how many are suitable. This paper undertakes a structured review of literature to provide clarity on behind metric selection and suggests a way forward for applied network analysis. It is essential that future studies explicitly report the rationale behind metric choice and describe how the mathematics relates to target concepts and themes. An exploratory metric analysis is an important step in identifying the most important metrics and understanding redundant ones. Finally, where applicable, one should select an optimal number of metrics that describe the network both locally and globally, so as to understand the interactions and structure as holistically as possible.
The online version contains supplementary material available at 10.1007/s41109-022-00476-w.
网络分析是一种用于分析表示实体之间关系的图的交互和结构的有用工具,例如城市系统中的各个部门。以这种方式连接实体对于理解现代世界的复杂性以及在事件期间如何应对这些复杂性至关重要。然而,自20世纪70年代以来,网络分析领域迅速发展,产生了大量描述不同图属性的可用指标。这种多样性使得网络分析能够应用于众多研究领域和背景中,然而广泛的应用产生了多义的指标。在确定采用哪种网络分析方法、选择哪些指标以及多少指标合适方面存在挑战。本文对文献进行了结构化综述,以阐明指标选择背后的原因,并为应用网络分析提出前进方向。未来的研究必须明确报告指标选择背后的基本原理,并描述数学与目标概念和主题的关系。探索性指标分析是识别最重要指标和理解冗余指标的重要一步。最后,在适用的情况下,应选择最佳数量的指标来局部和全局地描述网络,以便尽可能全面地理解交互和结构。
在线版本包含可在10.1007/s41109-022-00476-w获取的补充材料。