Multivariate Forecasting of Road Accidents Based on Geographically Separated Data

Katherina Meißner, Julia Rieck
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Abstract

As road accidents are the leading cause of death for young adults all over the world, it is necessary for the police to evaluate the accident circumstances carefully in order to take appropriate prevention measures. The circumstances of an accident vary in their frequency over time and depend on the local conditions at the accident site. An evaluation under geographical and temporal aspects is therefore necessary. On the basis of the time series, we investigate the various accident circumstances, which show interdependencies with each other, and their influence on the number of accidents. Moreover, a multivariate forecasting is used to indicate the future progression of accidents in different geographical regions. Forecast values are determined with a special extension of the ARIMA method. In order to identify geographical regions of interest, we present two different concepts for segmentation of accident data, which allow the adaptation of police measures to local characteristics.
基于地理分离数据的道路交通事故多元预测
由于道路交通事故是全世界年轻人死亡的主要原因,警察有必要仔细评估事故情况,以便采取适当的预防措施。事故发生的频率随着时间的推移而变化,这取决于事故现场的当地情况。因此,有必要在地理和时间方面进行评价。在时间序列的基础上,我们研究了各种相互依存的事故情况,以及它们对事故数量的影响。此外,本文还采用多元预测方法来预测不同地理区域的事故未来发展趋势。预测值是通过ARIMA方法的特殊扩展来确定的。为了确定感兴趣的地理区域,我们提出了两种不同的事故数据分割概念,这使得警察措施能够适应当地的特点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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