I. Gede Brawiswa Putra , Pei-Fen Kuo , Dominique Lord
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Moreover, spatial heterogeneity in crash data is frequently overlooked during causal inference analyses, potentially leading to inaccurate estimations.</p><p>This study introduces a geographically weighted difference-in-difference (GWDID) method to address these gaps and estimate the safety impact of marked sidewalks. This approach considers spatial heterogeneity within the dataset in the spatial causal inference framework, providing a more nuanced understanding of the intervention’s effects. The simplicity of the modeling process makes it applicable to various study designs relying solely on pre- and post-exposure outcome measurements. Conventional DIDs and Spatial Lag-DID models were used for comparison.</p><p>The dataset we utilized included a total of 13,641 pedestrian crashes across Taipei City, Taiwan. Then the crash point data was transformed into continuous probability values to determine the crash risk on each road segment using network kernel density estimation (NKDE). 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Notably, the impact of crash risk reduction increased from rural to urban areas, emphasizing the importance of considering spatial heterogeneity in transportation safety policy assessments.</p></div>","PeriodicalId":6926,"journal":{"name":"Accident; analysis and prevention","volume":"206 ","pages":"Article 107699"},"PeriodicalIF":5.7000,"publicationDate":"2024-07-16","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Estimating the effectiveness of marked sidewalks: An application of the spatial causality approach\",\"authors\":\"I. Gede Brawiswa Putra , Pei-Fen Kuo , Dominique Lord\",\"doi\":\"10.1016/j.aap.2024.107699\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p>Various safety enhancements and policies have been proposed to enhance pedestrian safety and minimize vehicle–pedestrian accidents. A relatively recent approach involves marked sidewalks delineated by painted pathways, particularly in Asia’s crowded urban centers, offering a cost-effective and space-efficient alternative to traditional paved sidewalks. While this measure has garnered interest, few studies have rigorously evaluated its effectiveness. Current before-after studies often use correlation-based approaches like regression, lacking effective consideration of causal relationships and confounding variables. Moreover, spatial heterogeneity in crash data is frequently overlooked during causal inference analyses, potentially leading to inaccurate estimations.</p><p>This study introduces a geographically weighted difference-in-difference (GWDID) method to address these gaps and estimate the safety impact of marked sidewalks. This approach considers spatial heterogeneity within the dataset in the spatial causal inference framework, providing a more nuanced understanding of the intervention’s effects. 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引用次数: 0
摘要
为了加强行人安全,最大限度地减少人车事故,人们提出了各种安全改进措施和政策。一种相对较新的方法是在人行道上用油漆划线,特别是在亚洲拥挤的城市中心,这种方法提供了一种替代传统铺设人行道的具有成本效益和空间效率的方法。虽然这一措施引起了人们的兴趣,但很少有研究对其效果进行严格评估。目前的前后研究通常使用回归等基于相关性的方法,缺乏对因果关系和混杂变量的有效考虑。此外,在因果推理分析过程中,碰撞数据的空间异质性经常被忽视,可能导致估算结果不准确。本研究引入了地理加权差分法(GWDID)来弥补这些不足,并估算有标志人行道的安全影响。这种方法在空间因果推理框架中考虑了数据集的空间异质性,使人们对干预效果有了更细致的了解。建模过程的简易性使其适用于各种仅依赖于暴露前后结果测量的研究设计。我们使用的数据集包括台湾台北市 13,641 起行人碰撞事故。我们使用的数据集包括台湾台北市的 13,641 起行人碰撞事故,然后将碰撞点数据转换为连续概率值,利用网络核密度估计(NKDE)确定每个路段的碰撞风险。处理组包括 1,407 个设有人行道标志的路段,对照组包括 3,097 个路面宽度相似的路段。结果显示,GWDID 模型优于空间滞后 DID 模型和传统 DID 模型。作为一个局部因果关系模型,它说明了安装有标志人行道的空间异质性。在治疗组中,该计划大大降低了43%路段的行人碰撞风险。系数分布图显示了-22.327 到 2.600 的范围,其中超过 95% 的区域为负值,这表明在安装有标志的人行道后,碰撞风险降低了。值得注意的是,碰撞风险降低的影响从农村地区向城市地区递增,这强调了在交通安全政策评估中考虑空间异质性的重要性。
Estimating the effectiveness of marked sidewalks: An application of the spatial causality approach
Various safety enhancements and policies have been proposed to enhance pedestrian safety and minimize vehicle–pedestrian accidents. A relatively recent approach involves marked sidewalks delineated by painted pathways, particularly in Asia’s crowded urban centers, offering a cost-effective and space-efficient alternative to traditional paved sidewalks. While this measure has garnered interest, few studies have rigorously evaluated its effectiveness. Current before-after studies often use correlation-based approaches like regression, lacking effective consideration of causal relationships and confounding variables. Moreover, spatial heterogeneity in crash data is frequently overlooked during causal inference analyses, potentially leading to inaccurate estimations.
This study introduces a geographically weighted difference-in-difference (GWDID) method to address these gaps and estimate the safety impact of marked sidewalks. This approach considers spatial heterogeneity within the dataset in the spatial causal inference framework, providing a more nuanced understanding of the intervention’s effects. The simplicity of the modeling process makes it applicable to various study designs relying solely on pre- and post-exposure outcome measurements. Conventional DIDs and Spatial Lag-DID models were used for comparison.
The dataset we utilized included a total of 13,641 pedestrian crashes across Taipei City, Taiwan. Then the crash point data was transformed into continuous probability values to determine the crash risk on each road segment using network kernel density estimation (NKDE). The treatment group comprised 1,407 road segments with marked sidewalks, while the control group comprised 3,097 segments with similar road widths. The pre-development program period was in 2017, and the post-development period was in 2020.
Results showed that the GWDID model outperformed the spatial lag DID and traditional DID models. As a local causality model, it illustrated spatial heterogeneity in installing marked sidewalks. The program significantly reduced pedestrian crash risk in 43% of the total road segments in the treatment group. The coefficient distribution map revealed a range from –22.327 to 2.600, with over 95% of the area yielding negative values, indicating reduced crash risk after installing marked sidewalks. Notably, the impact of crash risk reduction increased from rural to urban areas, emphasizing the importance of considering spatial heterogeneity in transportation safety policy assessments.
期刊介绍:
Accident Analysis & Prevention provides wide coverage of the general areas relating to accidental injury and damage, including the pre-injury and immediate post-injury phases. Published papers deal with medical, legal, economic, educational, behavioral, theoretical or empirical aspects of transportation accidents, as well as with accidents at other sites. Selected topics within the scope of the Journal may include: studies of human, environmental and vehicular factors influencing the occurrence, type and severity of accidents and injury; the design, implementation and evaluation of countermeasures; biomechanics of impact and human tolerance limits to injury; modelling and statistical analysis of accident data; policy, planning and decision-making in safety.