Texas Transportation Institute, SPPE, Texas A&M University System, College Station, TX 77843-3135, USA.
Accid Anal Prev. 2010 Jul;42(4):1118-27. doi: 10.1016/j.aap.2009.12.026.
This paper presents a fully Bayesian multivariate approach to before-after safety evaluation. Although empirical Bayes (EB) methods have been widely accepted as statistically defensible safety evaluation tools in observational before-after studies for more than a decade, EB has some limitations such that it requires a development and calibration of reliable safety performance functions (SPFs) and the uncertainty in the EB safety effectiveness estimates may be underestimated when a fairly large reference group is not available. This is because uncertainty (standard errors) of the estimated regression coefficients and dispersion parameter in SPFs is not reflected in the final safety effectiveness estimate of EB. Fully Bayesian (FB) methodologies in safety evaluation are emerging as the state-of-the-art methods that have a potential to overcome the limitations of EB in that uncertainty in regression parameters in the FB approach is propagated throughout the model and carries through to the final safety effectiveness estimate. Nonetheless, there have not yet been many applications of fully Bayesian methods in before-after studies. Part of reasons is the lack of documentation for a step-by-step FB implementation procedure for practitioners as well as an increased complexity in computation. As opposed to the EB methods of which steps are well-documented in the literature for practitioners, the steps for implementing before-after FB evaluations have not yet been clearly established, especially in more general settings such as a before-after study with a comparison group/comparison groups. The objectives of this paper are two-fold: (1) to develop a fully Bayesian multivariate approach jointly modeling crash counts of different types or severity levels for a before-after evaluation with a comparison group/comparison groups and (2) to establish a step-by-step procedure for implementing the FB methods for a before-after evaluation with a comparison group/comparison groups. The fully Bayesian multivariate approach introduced in this paper has additional advantages over the corresponding univariate approaches (whether classical or Bayesian) in that the multivariate approach can recover the underlying correlation structure of the multivariate crash counts and can also lead to a more precise safety effectiveness estimate by taking into account correlations among different crash severities or types for estimation of the expected number of crashes. The new method is illustrated with the multivariate crash count data obtained from expressways in Korea for 13 years to assess the safety effectiveness of decreasing the posted speed limit.
本文提出了一种完全贝叶斯的多元方法,用于前后安全性评估。尽管经验贝叶斯(EB)方法在十多年的观察性前后研究中已被广泛接受为具有统计学防御能力的安全评估工具,但 EB 仍存在一些局限性,例如需要开发和校准可靠的安全性能函数(SPF),并且当没有相当大的参考组时,EB 安全有效性估计的不确定性可能会被低估。这是因为 SPF 中回归系数和离散参数的不确定性(标准误差)并未反映在 EB 的最终安全有效性估计中。完全贝叶斯(FB)方法在安全性评估中作为一种新兴的方法,具有克服 EB 局限性的潜力,因为 FB 方法中回归参数的不确定性会在整个模型中传播,并反映在最终的安全有效性估计中。尽管如此,在前后研究中,完全贝叶斯方法的应用仍然很少。部分原因是缺乏为从业者提供的逐步实施 FB 程序的文档,以及计算复杂性增加。与 EB 方法不同,EB 方法的步骤在文献中为从业者提供了很好的记录,而实施前后 FB 评估的步骤尚未明确确定,尤其是在更一般的设置中,例如具有比较组/比较组的前后研究。本文的目的有两个:(1)开发一种完全贝叶斯的多元方法,共同对具有比较组/比较组的前后评估建模不同类型或严重程度的碰撞次数;(2)为具有比较组/比较组的前后评估建立实施 FB 方法的逐步程序。本文介绍的完全贝叶斯多元方法相对于相应的单变量方法(无论是经典的还是贝叶斯的)具有额外的优势,因为多元方法可以恢复多元碰撞计数的潜在相关结构,并且还可以通过考虑不同碰撞严重程度或类型之间的相关性来提高安全有效性估计的准确性,以便估计预期的碰撞数量。该新方法使用从韩国高速公路获得的多元碰撞计数数据进行说明,以评估降低张贴限速的安全性有效性。