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...
It is a relatively well-known fact that in problems of Bayesian model selection, improper priors sho...
Developing reliable safety performance functions (SPFs) capable of estimating expected accident freq...
This paper considers properties of half-normal distribution using informative priors under the Bayes...
The Bayesian inference method has been frequently adopted to develop safety performance functions. O...
The Bayesian inference method has been frequently adopted to develop safety performance functions. O...
The impact of crash contributing factors estimated by Safety Performance Functions (SPFs) is not con...
The precision and bias of Safety Performance Functions (SPFs) heavily rely on the data upon which th...
The precision and bias of Safety Performance Functions (SPFs) heavily rely on the data upon which th...
Introduction Safety performance functions (SPFs) are essential tools for highway agencies to predict...
Problem This paper aims to address two related issues when applying hierarchical Bayesian models for...
Safety Performance Function (SPF) is essential in traffic safety analysis, and it is useful to unvei...
Hierarchical models are suitable and very natural to model many real life phenomena, where data aris...
In road safety studies, decision makers must often cope with limited data conditions. In such circum...
The reference priors, initiated in Bernardo (1979) and further developed in Berger and Bernardo (199...
Tian et al. have reviewed and discussed various noninformative or weakly informative priors when rel...
It is a relatively well-known fact that in problems of Bayesian model selection, improper priors sho...
Developing reliable safety performance functions (SPFs) capable of estimating expected accident freq...
This paper considers properties of half-normal distribution using informative priors under the Bayes...
The Bayesian inference method has been frequently adopted to develop safety performance functions. O...
The Bayesian inference method has been frequently adopted to develop safety performance functions. O...
The impact of crash contributing factors estimated by Safety Performance Functions (SPFs) is not con...
The precision and bias of Safety Performance Functions (SPFs) heavily rely on the data upon which th...
The precision and bias of Safety Performance Functions (SPFs) heavily rely on the data upon which th...
Introduction Safety performance functions (SPFs) are essential tools for highway agencies to predict...
Problem This paper aims to address two related issues when applying hierarchical Bayesian models for...
Safety Performance Function (SPF) is essential in traffic safety analysis, and it is useful to unvei...
Hierarchical models are suitable and very natural to model many real life phenomena, where data aris...
In road safety studies, decision makers must often cope with limited data conditions. In such circum...
The reference priors, initiated in Bernardo (1979) and further developed in Berger and Bernardo (199...
Tian et al. have reviewed and discussed various noninformative or weakly informative priors when rel...
It is a relatively well-known fact that in problems of Bayesian model selection, improper priors sho...
Developing reliable safety performance functions (SPFs) capable of estimating expected accident freq...
This paper considers properties of half-normal distribution using informative priors under the Bayes...