Davies Toby, Marchione Elio
Department of Civil, Environmental and Geomatic Engineering, University College London, London, United Kingdom.
Department of Security and Crime Science, University College London, London, United Kingdom.
PLoS One. 2015 Nov 25;10(11):e0143638. doi: 10.1371/journal.pone.0143638. eCollection 2015.
In this paper we demonstrate the use of network analysis to characterise patterns of clustering in spatio-temporal events. Such clustering is of both theoretical and practical importance in the study of crime, and forms the basis for a number of preventative strategies. However, existing analytical methods show only that clustering is present in data, while offering little insight into the nature of the patterns present. Here, we show how the classification of pairs of events as close in space and time can be used to define a network, thereby generalising previous approaches. The application of graph-theoretic techniques to these networks can then offer significantly deeper insight into the structure of the data than previously possible. In particular, we focus on the identification of network motifs, which have clear interpretation in terms of spatio-temporal behaviour. Statistical analysis is complicated by the nature of the underlying data, and we provide a method by which appropriate randomised graphs can be generated. Two datasets are used as case studies: maritime piracy at the global scale, and residential burglary in an urban area. In both cases, the same significant 3-vertex motif is found; this result suggests that incidents tend to occur not just in pairs, but in fact in larger groups within a restricted spatio-temporal domain. In the 4-vertex case, different motifs are found to be significant in each case, suggesting that this technique is capable of discriminating between clustering patterns at a finer granularity than previously possible.
在本文中,我们展示了如何使用网络分析来刻画时空事件中的聚类模式。这种聚类在犯罪研究中具有理论和实际重要性,并构成了许多预防策略的基础。然而,现有的分析方法仅表明数据中存在聚类,而对所呈现模式的本质洞察甚少。在此,我们展示了如何将在空间和时间上接近的事件对分类用于定义一个网络,从而推广先前的方法。然后,将图论技术应用于这些网络能够比以往更深入地洞察数据结构。特别是,我们专注于网络基序的识别,其在时空行为方面具有明确的解释。由于基础数据的性质,统计分析较为复杂,我们提供了一种生成适当随机图的方法。使用两个数据集作为案例研究:全球范围内的海盗行为和城市地区的住宅入室盗窃。在这两种情况下,都发现了相同的显著三顶点基序;这一结果表明事件往往不仅成对发生,实际上还会在有限的时空范围内以更大的群体形式发生。在四顶点的情况下,在每种情况下发现了不同的显著基序,这表明该技术能够以比以往更精细的粒度区分聚类模式。