Department of Civil, Environmental and Construction Engineering, University of Central Florida, Orlando, FL 32816-2450, USA.
Accid Anal Prev. 2013 Jul;56:51-8. doi: 10.1016/j.aap.2013.03.023. Epub 2013 Apr 3.
The Bayesian inference method has been frequently adopted to develop safety performance functions. One advantage of the Bayesian inference is that prior information for the independent variables can be included in the inference procedures. However, there are few studies that discussed how to formulate informative priors for the independent variables and evaluated the effects of incorporating informative priors in developing safety performance functions. This paper addresses this deficiency by introducing four approaches of developing informative priors for the independent variables based on historical data and expert experience. Merits of these informative priors have been tested along with two types of Bayesian hierarchical models (Poisson-gamma and Poisson-lognormal models). Deviance information criterion (DIC), R-square values, and coefficients of variance for the estimations were utilized as evaluation measures to select the best model(s). Comparison across the models indicated that the Poisson-gamma model is superior with a better model fit and it is much more robust with the informative priors. Moreover, the two-stage Bayesian updating informative priors provided the best goodness-of-fit and coefficient estimation accuracies. Furthermore, informative priors for the inverse dispersion parameter have also been introduced and tested. Different types of informative priors' effects on the model estimations and goodness-of-fit have been compared and concluded. Finally, based on the results, recommendations for future research topics and study applications have been made.
贝叶斯推断方法已被频繁应用于开发安全性能函数。贝叶斯推断的一个优势在于可以在推断过程中包含自变量的先验信息。然而,很少有研究讨论如何为自变量制定有用的先验信息,并评估在开发安全性能函数中纳入有用先验信息的效果。本文通过介绍基于历史数据和专家经验的四种为自变量制定有用先验信息的方法来解决这一不足。沿着两种类型的贝叶斯层次模型(泊松-伽马和泊松-对数正态模型),测试了这些有用先验信息的优点。偏差信息准则(DIC)、估计的 R 平方值和方差系数被用作选择最佳模型的评估指标。模型之间的比较表明,泊松-伽马模型具有更好的拟合优度,并且对于有用的先验信息更稳健。此外,两阶段贝叶斯更新有用先验信息提供了最佳的拟合优度和系数估计精度。此外,还介绍并测试了逆分散参数的有用先验信息。比较并总结了不同类型的有用先验信息对模型估计和拟合优度的影响。最后,根据结果,提出了未来研究课题和研究应用的建议。