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Accident reduction factors and causal inference in traffic safety studies: a review

机译:交通安全研究中的事故减少因素和因果推断:综述

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摘要

Accident reduction factors are used to predict the change in accident occurrence which a countermeasure can be expected to cause. Since ethical and legal obstacles preclude the use of randomized experiments when evaluating traffic safety improvements, empirical support for the causal effectiveness of accident countermeasures comes entirely form observational studies. Drawing on developments in causal inference initiated by Donald Rubin, it is argued here that the mechanism by which sites are selected for application of a countermeasure should be included as part of a study's data model, and that when important features of the selection mechanism are neglected, existing methods for estimating accident reduction factors become inconsistent. A promising, but neglected, way out of these difficulties lies in developing rational countermeasure selection methods which also support valid causal inference of countermeasure effects.
机译:事故减少因素用于预测可以预期会导致对策的事故发生变化。由于在评估交通安全性改进时,出于道德和法律障碍,无法使用随机实验,因此,对事故对策因果关系的实证支持完全来自观察性研究。利用唐纳德·鲁宾(Donald Rubin)提出的因果推理的发展,这里认为应将选择采取对策的地点的机制作为研究数据模型的一部分,并且当选择机制的重要特征被忽略时因此,现有的估计事故减少因素的方法变得不一致。解决这些困难的一个有希望但被忽略的途径在于开发合理的对策选择方法,该方法也支持对策效果的有效因果推论。

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