There has been a considerable amount of work devoted by transportation safety analysts to the development and application of new and innovative models for analyzing crash data. One important characteristic about crash data that has been documented in the literature is related to datasets that contained a large amount of zeros and a long or heavy tail (which creates highly dispersed data). For such datasets, the number of sites where no crash is observed is so large that traditional distributions and regression models, such as the Poisson and Poisson-gamma or negative binomial (NB) models cannot be used efficiently. To overcome this problem, the NB-Lindley (NB-L) distribution has recently been introduced for analyzing count data that are cha...
Crash frequency prediction models have been an important subject of safety research that unveils a r...
This paper presents a new procedure for evaluating the goodness of fit of Generalized Linear Models ...
Developing sound or reliable statistical models for analyzing motor vehicle crashes is very importan...
In order to analyze crash data, many new analysis tools are being developed by transportation safety...
In order to analyze crash data, many new analysis tools are being developed by transportation safety...
Modelling crash data has been an integral part of the research done in highway safety. Different too...
As crash data have distinctive behavior like over-dispersion, researchers have used statistical meth...
Crash data are often highly dispersed; it may also include a large amount of zero observations or ha...
US Transportation Collection2022PDFManuscriptKhodadadi, AliTsapakis, IoannisShirazi, MohammadaliDas,...
2 Crash data can often be characterized by over-dispersion, heavy (long) tail and many observations ...
This paper provides an insight and comparison of the Poisson model and Poisson-Gamma model (also kno...
Traditional crash count models, such as the Poisson and Negative Binomial models, do not account for...
Statistical regression models are widely used in highway safety for modeling motor vehicle crash dat...
Geedipally, Lord and Dhavala 2 The Poisson-Gamma (PG) or negative binomial (NB) model still remains ...
Crash frequency prediction models have been an important subject of safety research that unveils a r...
Crash frequency prediction models have been an important subject of safety research that unveils a r...
This paper presents a new procedure for evaluating the goodness of fit of Generalized Linear Models ...
Developing sound or reliable statistical models for analyzing motor vehicle crashes is very importan...
In order to analyze crash data, many new analysis tools are being developed by transportation safety...
In order to analyze crash data, many new analysis tools are being developed by transportation safety...
Modelling crash data has been an integral part of the research done in highway safety. Different too...
As crash data have distinctive behavior like over-dispersion, researchers have used statistical meth...
Crash data are often highly dispersed; it may also include a large amount of zero observations or ha...
US Transportation Collection2022PDFManuscriptKhodadadi, AliTsapakis, IoannisShirazi, MohammadaliDas,...
2 Crash data can often be characterized by over-dispersion, heavy (long) tail and many observations ...
This paper provides an insight and comparison of the Poisson model and Poisson-Gamma model (also kno...
Traditional crash count models, such as the Poisson and Negative Binomial models, do not account for...
Statistical regression models are widely used in highway safety for modeling motor vehicle crash dat...
Geedipally, Lord and Dhavala 2 The Poisson-Gamma (PG) or negative binomial (NB) model still remains ...
Crash frequency prediction models have been an important subject of safety research that unveils a r...
Crash frequency prediction models have been an important subject of safety research that unveils a r...
This paper presents a new procedure for evaluating the goodness of fit of Generalized Linear Models ...
Developing sound or reliable statistical models for analyzing motor vehicle crashes is very importan...