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首页> 外文期刊>International Journal of Geographical Information Science >A space-time varying graph for modelling places and events in a network
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A space-time varying graph for modelling places and events in a network

机译:用于对网络中的位置和事件进行建模的时空变化图

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摘要

Modelling topological relationships between places and events is challenging especially because these relationships are dynamic, and their evolutionary analysis relies on the explanatory power of representing their interactions across different temporal resolutions. In this paper, we introduce the Space-Time Varying Graph (STVG) based on the whole graph approach that combines directed and bipartite subgraphs with a time-tree for representing the complex interaction between places and events across time. We demonstrate how the proposed STVG can be exploited to identify and extract evolutionary patterns of traffic accidents using graph metrics, ad-hoc graph queries and clustering algorithms. The results reveal evolutionary patterns that uncover the places with high incidence of accidents over different time resolutions, reveal the main reasons why the traffic accidents have occurred, and disclose evolving communities of densely connected traffic accidents over time.
机译:建模地点和事件之间的拓扑关系具有挑战性,特别是因为这些关系是动态的,并且它们的进化分析依赖于表示其在不同时间分辨率上的相互作用的解释能力。在本文中,我们介绍了基于整个图方法的时空变化图(STVG),该方法将有向子图和二部图子图与时间树结合起来,以表示跨时间的地点和事件之间的复杂交互。我们演示了如何利用图指标,即席图查询和聚类算法来利用提议的STVG来识别和提取交通事故的演变模式。结果揭示了演化模式,揭示了在不同时间分辨率下事故发生率高的地方,揭示了交通事故发生的主要原因,并揭示了随着时间的流逝而发展的密集交通事故社区。

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