Decision trees applied to injury severity in road accidents with only one victim – focus on vulnerable users

Hudson Carrer Pereira, Ana Bastos, Alvaro Seco, Francisco Antunes
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Abstract

The injury severity resulting from a road accident is usually defined based on the most serious victim, which can involve more than one driver, pedestrian, or passenger. Unlike other works that focus on driver characteristics, the present study developed for urban roads focuses on vulnerable users by limiting the database to accidents with a single victim with more serious injuries. Using the CART algorithm, the selected methodology strives to reduce the effects of data imbalance, incorporating various misclassification costs to improve the ‘accident with death’ prediction (minority class) and evaluating the quality results by association rules. After incorporating a 5:1 misclassification cost, recall increased from 0% to 43.3%. Two predictive ‘death’ decision rules were validated, and the identified factors were alcohol/drug consumption, type of accident, age group and annual average daily traffic for traffic above 70 km/h. Limiting the study to accidents with only one person suffering a more serious injury allowed for the identification of significant variables related to vulnerable users, and that can be considered in support of decision-making to reduce the severity of accidents.
决策树适用于只有一名受害者的道路交通事故中的伤害严重程度--重点关注易受伤害的使用者
道路交通事故造成的伤害严重程度通常是根据最严重的受害者来定义的,其中可能涉及多名驾驶员、行人或乘客。与其他侧重于驾驶员特征的研究不同,本研究针对城市道路开发,通过将数据库限制在单个受害者受伤较严重的事故中,重点关注易受伤害的用户。所选方法使用 CART 算法,努力减少数据不平衡的影响,纳入各种误分类成本以改进 "死亡事故 "预测(少数类别),并通过关联规则评估结果质量。采用 5:1 的误分类成本后,召回率从 0% 提高到 43.3%。两个预测 "死亡 "的决策规则得到了验证,确定的因素包括酒精/毒品消耗量、事故类型、年龄组以及时速 70 公里以上的年平均日交通流量。由于研究仅限于只有一人受到较严重伤害的事故,因此可以确定与易受伤害用户有关的重要变量,这些变量可用于支持降低事故严重性的决策。
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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