The precision and bias of Safety Performance Functions (SPFs) heavily rely on the data upon which they are estimated. When local (spatially and temporally representative) data are not sufficiently available, the estimated parameters in SPFs are likely to be biased and inefficient. Estimating SPFs using Bayesian inference may moderate the effects of local data insufficiency in that local data can be combined with prior information obtained from other parts of the world to incorporate additional evidence into the SPFs. In past applications of Bayesian models, non-informative priors have routinely been used because incorporating prior information in SPFs is not straightforward. The previous few attempts to employ informative priors in estimati...
Developing reliable safety performance functions (SPFs) capable of estimating expected accident freq...
The negative binomial (NB) model has been used extensively by traffic safety analysts as a crash pre...
Safety Performance Function (SPF) is essential in traffic safety analysis, and it is useful to unvei...
The precision and bias of Safety Performance Functions (SPFs) heavily rely on the data upon which th...
The impact of crash contributing factors estimated by Safety Performance Functions (SPFs) is not con...
Introduction Safety performance functions (SPFs) are essential tools for highway agencies to predict...
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...
In road safety studies, decision makers must often cope with limited data conditions. In such circum...
Problem This paper aims to address two related issues when applying hierarchical Bayesian models for...
In road safety studies, one often must cope with limited data conditions in the decision making proc...
In evaluating the effectiveness of a road safety treatment, the regression to the mean phenomenon is...
Crash reduction factors (CRFs) are used to estimate the potential number of traffic crashes expected...
The negative binomial (NB) model has been used extensively by traffic safety analysts as a crash pre...
This study investigated the effects of prior assumptions in applications of full Bayes methods in ro...
Developing reliable safety performance functions (SPFs) capable of estimating expected accident freq...
The negative binomial (NB) model has been used extensively by traffic safety analysts as a crash pre...
Safety Performance Function (SPF) is essential in traffic safety analysis, and it is useful to unvei...
The precision and bias of Safety Performance Functions (SPFs) heavily rely on the data upon which th...
The impact of crash contributing factors estimated by Safety Performance Functions (SPFs) is not con...
Introduction Safety performance functions (SPFs) are essential tools for highway agencies to predict...
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...
In road safety studies, decision makers must often cope with limited data conditions. In such circum...
Problem This paper aims to address two related issues when applying hierarchical Bayesian models for...
In road safety studies, one often must cope with limited data conditions in the decision making proc...
In evaluating the effectiveness of a road safety treatment, the regression to the mean phenomenon is...
Crash reduction factors (CRFs) are used to estimate the potential number of traffic crashes expected...
The negative binomial (NB) model has been used extensively by traffic safety analysts as a crash pre...
This study investigated the effects of prior assumptions in applications of full Bayes methods in ro...
Developing reliable safety performance functions (SPFs) capable of estimating expected accident freq...
The negative binomial (NB) model has been used extensively by traffic safety analysts as a crash pre...
Safety Performance Function (SPF) is essential in traffic safety analysis, and it is useful to unvei...