基于多变量空间聚类的交通事故危险因素局部分析

C. Figuera, J. Lillo, I. Mora-Jiménez, J. Rojo-álvarez, A. Caamaño
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引用次数: 1

摘要

根据以往的研究,交通事故数据具有空间依赖性,在分析时应考虑到这一点。为此,应对事故进行适当的空间分割,使后续的空间分析能够提供有意义的结果。在这项工作中,我们提出了一种多变量空间聚类方法,以便对不同的道路路段进行新的空间表征,然后根据它们的风险特征将它们分配到一个小的典型事故集合中。首先,根据相应的空间事故密度估计对每条道路进行分割。然后,用表示事故属性的数字向量对每个片段进行表征。第三阶段采用k-means聚类算法进行空间聚类。来自西班牙瓦伦西亚社区的交通事故数据被用于测试我们的方法。结果表明,我们的方法是一种灵活而直观的方法,可以对研究区域的道路进行空间表征,甚至可以找到所分析的危险因素值之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multivariate spatial clustering of traffic accidents for local profiling of risk factors
According to previous studies, traffic accident data have a spatial dependence which should be taken into account when analyzed. For this purpose, a proper spatial segmentation of accidents should be carried out so that subsequent spatial analysis can provide significant results. In this work, we propose a method for spatial clustering of multiple variables in order to make a new spatial characterization of the different road stretches and then to assign them into a small set of typical accidents according to their risk profile. First, every road is segmented according to an estimation of the corresponding spatial accident density. Then, each segment is characterized with a numerical vector representing accident attributes. The spatial clustering is performed in the third stage by applying a k-means clustering algorithm. Traffic accident data from Comunidad Valenciana, in Spain, have been used for testing our method. Results show that our approach is a flexible and intuitive way for spatially characterizing the roads of the region under study, and even for finding relationships between values of the analyzed risk factors.
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