The definitive publication is available at Elsevier via http://dx.doi.org/10.1016/j.ijtst.2017.07.004 © 2017. This version, has not been modified, and is made available under the CC-BY-NC-ND 4.0 license http://creativecommons.org/licenses/by-nc-nd/4.0/This paper explores the idea of applying a machine learning approach to develop a global road safety performance function (SFP) that can be used to predict the expected crash frequencies of different highways from different regions. A deep belief network (DBN) – one of the most popular deep learning models is introduced as an alternative to the traditional regression models for crash modelling. An extensive empirical study is conducted using three real world crash data sets covering six classe...
Traffic accidents are inevitable events that occur unexpectedly and unintentionally. Therefore, anal...
The number of daily accidents due to road conditions, vehicle speed, weather conditions, e...
In this paper, a deep learning model using a Recurrent Neural Network (RNN) was developed and employ...
This paper explores the idea of applying a machine learning approach to develop a global road safety...
Machine-learning technology powers many aspects of modern society. Compared to the conventional mach...
Future prediction is a fascinating topic for human endeavor and is identified as a critical tool in ...
A better understanding of circumstances contributing to the severity outcome of traffic crashes is a...
This study investigates the power of deep learning in predicting the severity of injuries when accid...
This study proposes a Neural Network (NN) classifier model for predicting crashes on freeways and ar...
Nearly 5,000 people are killed and more than 418,000 are injured in weather-related traffic incident...
One way to reduce road crashes is to determine the main influential factors among a long list that a...
This study develops neural network models to explore the nonlinear relationship between crash freque...
Traffic accidents on highways are a leading cause of death despite the development of traffic safety...
Motor vehicle crashes are one of our nation\u27s most serious social, economic and health issues. Th...
Crash severity prediction has been raised as a key problem in traffic accident studies. Thus, to pro...
Traffic accidents are inevitable events that occur unexpectedly and unintentionally. Therefore, anal...
The number of daily accidents due to road conditions, vehicle speed, weather conditions, e...
In this paper, a deep learning model using a Recurrent Neural Network (RNN) was developed and employ...
This paper explores the idea of applying a machine learning approach to develop a global road safety...
Machine-learning technology powers many aspects of modern society. Compared to the conventional mach...
Future prediction is a fascinating topic for human endeavor and is identified as a critical tool in ...
A better understanding of circumstances contributing to the severity outcome of traffic crashes is a...
This study investigates the power of deep learning in predicting the severity of injuries when accid...
This study proposes a Neural Network (NN) classifier model for predicting crashes on freeways and ar...
Nearly 5,000 people are killed and more than 418,000 are injured in weather-related traffic incident...
One way to reduce road crashes is to determine the main influential factors among a long list that a...
This study develops neural network models to explore the nonlinear relationship between crash freque...
Traffic accidents on highways are a leading cause of death despite the development of traffic safety...
Motor vehicle crashes are one of our nation\u27s most serious social, economic and health issues. Th...
Crash severity prediction has been raised as a key problem in traffic accident studies. Thus, to pro...
Traffic accidents are inevitable events that occur unexpectedly and unintentionally. Therefore, anal...
The number of daily accidents due to road conditions, vehicle speed, weather conditions, e...
In this paper, a deep learning model using a Recurrent Neural Network (RNN) was developed and employ...