This study proposes a Bayesian spatio-temporal interaction approach for hotspot identification by applying the full Bayesian (FB) technique in the context of macroscopic safety analysis. Compared with the emerging Bayesian spatial and temporal approach, the Bayesian spatio-temporal interaction model contributes to a detailed understanding of differential trends through analyzing and mapping probabilities of area-specific crash trends as differing from the mean trend and highlights specific locations where crash occurrence is deteriorating or improving over time. With traffic analysis zones (TAZs) crash data collected in Florida, an empirical analysis was conducted to evaluate the following three approaches for hotspot identification: FB ran...
This study develops a Bayesian spatial random parameters Tobit model to analyze crash rates on road ...
As Connected Vehicle technologies begin to be deployed along roadway networks, they will be providin...
This paper introduces a Bayesian accident risk analysis framework that integrates accident frequency...
Zonal crash prediction has been one of the most prevalent topics in recent traffic safety research. ...
In this paper, we propose a Bayesian hierarchical model for predicting accident counts in future yea...
The identification of accident hot spots is a central task of road safety management. Bayesian count...
This study investigates the effect of spatial correlation using a Bayesian spatial framework to mode...
This study investigates the effect of spatial correlation using a Bayesian spatial framework to mode...
This study proposes a framework of a model-based hot spot identification method by applying full Bay...
This study proposes a framework of a model-based hot spot identification method by applying full Bay...
Hotspot identification (HSID) is a critical part of network-wide safety evaluation. Put simply, HSID...
In recent years, Bayesian random effect models that account for the temporal and spatial correlation...
his paper investigates the dependencies between severity levels of road traffic accidents, accountin...
We have proposed a data-driven method for spatio-temporal analysis of car crashes based on the Multi...
In recent years, Bayesian random effect models that account for the temporal and spatial correlation...
This study develops a Bayesian spatial random parameters Tobit model to analyze crash rates on road ...
As Connected Vehicle technologies begin to be deployed along roadway networks, they will be providin...
This paper introduces a Bayesian accident risk analysis framework that integrates accident frequency...
Zonal crash prediction has been one of the most prevalent topics in recent traffic safety research. ...
In this paper, we propose a Bayesian hierarchical model for predicting accident counts in future yea...
The identification of accident hot spots is a central task of road safety management. Bayesian count...
This study investigates the effect of spatial correlation using a Bayesian spatial framework to mode...
This study investigates the effect of spatial correlation using a Bayesian spatial framework to mode...
This study proposes a framework of a model-based hot spot identification method by applying full Bay...
This study proposes a framework of a model-based hot spot identification method by applying full Bay...
Hotspot identification (HSID) is a critical part of network-wide safety evaluation. Put simply, HSID...
In recent years, Bayesian random effect models that account for the temporal and spatial correlation...
his paper investigates the dependencies between severity levels of road traffic accidents, accountin...
We have proposed a data-driven method for spatio-temporal analysis of car crashes based on the Multi...
In recent years, Bayesian random effect models that account for the temporal and spatial correlation...
This study develops a Bayesian spatial random parameters Tobit model to analyze crash rates on road ...
As Connected Vehicle technologies begin to be deployed along roadway networks, they will be providin...
This paper introduces a Bayesian accident risk analysis framework that integrates accident frequency...