结合贝叶斯分层模型和配对抽样研究驾驶员损伤严重程度的性别差异

IF 4.6 3区 工程技术 Q1 ECONOMICS
Zijun Wang , Lu Ma , Laura Eboli , Gabriella Mazzulla
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引用次数: 0

摘要

性别平等是实现全球社会包容性增长的根本。为促进性别平等,必须应对设计包容性和对性别问题敏感的公共政策的挑战。例如,了解交通安全方面的性别差异对于实现公平的交通系统很重要。多年来,在车辆安全技术、道路设计和碰撞测试标准方面取得了重大进展;然而,损伤严重程度的系统性性别差异仍然存在。关于性别对碰撞损伤严重程度的影响,文献显示了截然不同的发现。相互矛盾的证据似乎主要是由于混杂因素和未观察到的碰撞异质性。为了研究驾驶员伤害严重程度的性别差异,本研究提出了一种基于匹配对抽样与贝叶斯分层建模相结合的创新方法,分析了2022年警方报告的机动车碰撞数据。具体来说,分析了两车碰撞中自然发生的男女司机对。结果表明,女性面临更高的伤害严重程度的风险,但当涉及酒精/药物时,这种性别差异似乎不那么明显。这些研究结果强调需要制定旨在最大限度地缩小差距的安全政策,例如修订车辆安全标准以更好地保护女性,制定对性别问题有敏感认识的安全干预措施,以及促进有效的驾驶员培训计划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining Bayesian hierarchical modeling with matched pair sampling for exploring gender differences in driver injury severity
Gender equality is fundamental for achieving inclusive growth of the global community. To promote gender equality, challenges in designing inclusive and gender-sensitive public policies must be launched. For example, understanding gender differences in traffic safety is important for aiming to an equitable transportation system. Over the years, significant improvements have been made in vehicle safety technology, road design and crash test standards; however, systematic gender differences in injury severity persist. Literature shows contrasting findings concerning the effect of gender on crash injury severity. It seems that conflicting evidence is mainly due to confounding factors and unobserved heterogeneity in crashes. To examine gender differences in driver injury severity, this study proposes an innovative approach based on combination of matched pair sampling with Bayesian hierarchical modeling, analyzing 2022 police-reported motor vehicle crash data. Specifically, naturally occurring pairs of male and female drivers in two-vehicle crashes are analyzed. Results suggests that females face a higher risk of injury severity, but this gender difference seems less obvious when alcohol/drugs are involved. These findings highlight the need to develop safety policies oriented to minimize the gap, e.g. revising vehicle safety standards to better protect females, developing gender-sensitive safety interventions, and promoting effective driver training programs.
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来源期刊
CiteScore
8.40
自引率
2.60%
发文量
59
审稿时长
60 days
期刊介绍: Research in Transportation Economics is a journal devoted to the dissemination of high quality economics research in the field of transportation. The content covers a wide variety of topics relating to the economics aspects of transportation, government regulatory policies regarding transportation, and issues of concern to transportation industry planners. The unifying theme throughout the papers is the application of economic theory and/or applied economic methodologies to transportation questions.
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