Motorcycle crash severity is under-researched in Ghana. Thus, the probable risk factors and association between these factors and motorcycle crash severity outcomes is not known. Traditional statistical models have intrinsic assumptions and pre-defined correlations that, if flouted, can generate inaccurate results. In this study, machine learning based algorithms were employed to predict and classify motorcycle crash severity. Machine learning based techniques are non-parametric models without the presumption of relationships between endogenous and exogenous variables. The main aim of this research is to evaluate and compare different approaches to modeling motorcycle crash severity as well as investigating the effect of risk factors on the...
Road Traffic Crash (RTC) is among the leading causes of death in the world and has a significant imp...
In spite of enormous improvements in vehicle safety, roadway design, and operations, there is still ...
Abstract —Road accidents are an inevitable part of everyday life. In most daily news reports, there ...
Motorcycle crash severity is under-researched in Ghana. Thus, the probable risk factors and associat...
There is a growing interest in the application of the machine learning techniques in predicting the ...
Road crash fatality is a universal problem of the transportation system. A massive death toll caused...
Despite the countless benefits derived from motorcycle usage, it has become a significant public hea...
© 2020, © 2020 Taylor & Francis Group, LLC and The University of Tennessee. Motorcycles are becoming...
Objective: Analyze the road crashes in Cartagena (Colombia) and the factors associated with the coll...
Motorcycles are becoming increasingly popular, especially in developing countries. This increasing e...
Traffic accidents pose a significant public safety concern, leading to numerous injuries and fatalit...
This study aims to explore the use of machine learning algorithms in predicting the likelihood of ro...
Road traffic injuries are one of the primary reasons for death, especially in developing countries l...
Despite the measures put in place in different countries, road traffic fatalities are still consider...
Automobiles are one of the greatest inventions of all times. They have simplified our lives and prov...
Road Traffic Crash (RTC) is among the leading causes of death in the world and has a significant imp...
In spite of enormous improvements in vehicle safety, roadway design, and operations, there is still ...
Abstract —Road accidents are an inevitable part of everyday life. In most daily news reports, there ...
Motorcycle crash severity is under-researched in Ghana. Thus, the probable risk factors and associat...
There is a growing interest in the application of the machine learning techniques in predicting the ...
Road crash fatality is a universal problem of the transportation system. A massive death toll caused...
Despite the countless benefits derived from motorcycle usage, it has become a significant public hea...
© 2020, © 2020 Taylor & Francis Group, LLC and The University of Tennessee. Motorcycles are becoming...
Objective: Analyze the road crashes in Cartagena (Colombia) and the factors associated with the coll...
Motorcycles are becoming increasingly popular, especially in developing countries. This increasing e...
Traffic accidents pose a significant public safety concern, leading to numerous injuries and fatalit...
This study aims to explore the use of machine learning algorithms in predicting the likelihood of ro...
Road traffic injuries are one of the primary reasons for death, especially in developing countries l...
Despite the measures put in place in different countries, road traffic fatalities are still consider...
Automobiles are one of the greatest inventions of all times. They have simplified our lives and prov...
Road Traffic Crash (RTC) is among the leading causes of death in the world and has a significant imp...
In spite of enormous improvements in vehicle safety, roadway design, and operations, there is still ...
Abstract —Road accidents are an inevitable part of everyday life. In most daily news reports, there ...