Predicting crash injury severity in road freight flows with association rules algorithms

IF 0.8 Q4 ENGINEERING, INDUSTRIAL Acta Logistica Pub Date : 2023-09-30 DOI:10.22306/al.v10i3.410
Luis Berrones-Sanz, Estefania Perez-Diaz, Dulce Becerril, Esteban Diaz
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Abstract

The purpose of this study is to evaluate the use of the Apriori association rule mining algorithm to classify and predict the severity of the 718,565 accidents involving freight transport vehicles in Mexico, which occurred between 2009 and 2018. The accidents were classified into those in which there was only material damage or injured people {Severity=0} and in those in which people died {Severity=1}. 115 association rules were obtained, 79 corresponding to non-fatal accidents, and 36 to fatal ones. The main factors associated with the severity of the accident belong to male subjects, involved in accidents that occur on weekends and in suburban areas, and where the probability of the accident being fatal is 1.69 times greater. Thus, the results of using the association rules to relate demographic and circumstantial characteristics of the accident with the severity of the injuries show an accuracy of just over 65%. Therefore, despite the limitations that may occur due to the omission of relevant variables, and the fact that the results show little precision, the feasibility of using machine learning techniques and, specifically, the association rules as promising tools to help analyze accidents and help launch road safety interventions more effectively is manifested.
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基于关联规则算法的道路货运流碰撞伤害严重程度预测
本研究的目的是评估使用Apriori关联规则挖掘算法对2009年至2018年发生在墨西哥的718,565起涉及货运车辆的事故进行分类和预测的严重程度。事故分为仅造成物质损失或人员受伤的事故{严重性=0}和造成人员死亡的事故{严重性=1}。得到115条关联规则,其中79条对应于非致命事故,36条对应于致命事故。与事故严重程度相关的主要因素是男性受试者,他们在周末和郊区发生事故,事故的致命概率是男性受试者的1.69倍。因此,使用关联规则将事故的人口统计学和环境特征与伤害的严重程度联系起来的结果显示,准确率刚刚超过65%。因此,尽管由于遗漏相关变量而可能出现的局限性,以及结果显示精度不高的事实,但使用机器学习技术,特别是关联规则作为有前途的工具来帮助分析事故并帮助更有效地启动道路安全干预措施的可行性得到了体现。
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来源期刊
Acta Logistica
Acta Logistica Engineering-Industrial and Manufacturing Engineering
CiteScore
1.80
自引率
28.60%
发文量
36
审稿时长
4 weeks
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