This thesis presents different data mining/machine learning techniques to analyze the vulnerable road users\u27 (i.e., pedestrian and bicycle) crashes by developing crash prediction models at macro-level. In this study, we developed data mining approach (i.e., decision tree regression (DTR) models) for both pedestrian and bicycle crash counts. To author knowledge, this is the first application of DTR models in the growing traffic safety literature at macro-level. The empirical analysis is based on the Statewide Traffic Analysis Zones (STAZ) level crash count data for both pedestrian and bicycle from the state of Florida for the year of 2010 to 2012. The model results highlight the most significant predictor variables for pedestrian and bicy...
open3noTo investigate the factors predicting severity of bicycle crashes in Italy, we used an observ...
Walking plays an important role in overcoming many challenges nowadays, and governments and local au...
There have been great efforts to develop traffic crash prediction models for various types of facili...
This thesis presents different data mining/machine learning techniques to analyze the vulnerable roa...
Travel safety research works include the studies of risk factor investigation, crash detection, and ...
Objective: Analyze the road crashes in Cartagena (Colombia) and the factors associated with the coll...
This study applied tree-based machine learning methods to investigate the contributing factors to bo...
In recent years, traffic crashes and the casualties, damages, and injuries they cause have been an i...
Recent trends in crashes indicate a dramatic increase in both the number and share of pedestrian and...
One main interest in crash frequency modeling is to predict crash counts over a spatial domain of in...
The first part of the research presents an investigation of pedestrian conflicts and crash count mod...
Road crash fatality is a universal problem of the transportation system. A massive death toll caused...
Traffic crashes account for most of casualties and injuries worldwide, and there has been growing co...
Machine learning has become a cutting-edge and widely studied data science field of study in recent ...
Pedestrians and bicyclists are the most vulnerable road users and suffer the most severe consequence...
open3noTo investigate the factors predicting severity of bicycle crashes in Italy, we used an observ...
Walking plays an important role in overcoming many challenges nowadays, and governments and local au...
There have been great efforts to develop traffic crash prediction models for various types of facili...
This thesis presents different data mining/machine learning techniques to analyze the vulnerable roa...
Travel safety research works include the studies of risk factor investigation, crash detection, and ...
Objective: Analyze the road crashes in Cartagena (Colombia) and the factors associated with the coll...
This study applied tree-based machine learning methods to investigate the contributing factors to bo...
In recent years, traffic crashes and the casualties, damages, and injuries they cause have been an i...
Recent trends in crashes indicate a dramatic increase in both the number and share of pedestrian and...
One main interest in crash frequency modeling is to predict crash counts over a spatial domain of in...
The first part of the research presents an investigation of pedestrian conflicts and crash count mod...
Road crash fatality is a universal problem of the transportation system. A massive death toll caused...
Traffic crashes account for most of casualties and injuries worldwide, and there has been growing co...
Machine learning has become a cutting-edge and widely studied data science field of study in recent ...
Pedestrians and bicyclists are the most vulnerable road users and suffer the most severe consequence...
open3noTo investigate the factors predicting severity of bicycle crashes in Italy, we used an observ...
Walking plays an important role in overcoming many challenges nowadays, and governments and local au...
There have been great efforts to develop traffic crash prediction models for various types of facili...