Many techniques including logistic regression and artificial intelligence have been employed to explain school-goers mode choice behavior. This paper aims to compare the effectiveness, robustness, and convergence of three different machine learning tools (MLT), namely the extreme learning machine (ELM), support vector machine (SVM), and multi-layer perceptron neural network (MLP-NN) to predict school-goers mode choice behavior in Al-Khobar and Dhahran cities of the Kingdom of Saudi Arabia (KSA). It uses the students’ information, including the school grade, the distance between home and school, travel time, family income and size, number of students in the family and education level of parents as input variables to the MLT. However, their o...
Traditional mode choice models consider travel modes of an individual in a consecutive trip to be in...
A new approach in recognizing travel mode choice patterns is proposed, based on the Support Vector M...
Artificial Intelligence in form of Machine Learning classifiers is increasingly applied for travel c...
Many techniques including logistic regression and artificial intelligence have been employed to expl...
Mode choice analysis of school trips becomes important due to the fact that these trips contribute t...
Predicting the choice behavior of individuals is an important step in transportation planning. This ...
Travel demand models are required by transportation planners to predict the travel behaviour of peop...
In recent decades, transportation planning researchers have used diverse types of machine learning (...
AbstractTravel mode choice prediction of individuals is important in planning new transportation pro...
Background: A complex travel behaviour among users is intertwined with many factors. Traditionally, ...
The analysis of travel mode choice is an important task in transportation planning and policy making...
Understanding choice behavior regarding travel mode is essential in forecasting travel demand. Machi...
This study examines the factors that influence the mode choice of students in school trips using a m...
Because of declining enrollment and school closures in some German regions students have to choose a...
Even in a context of rapidly evolving transportation and information technologies, household travel ...
Traditional mode choice models consider travel modes of an individual in a consecutive trip to be in...
A new approach in recognizing travel mode choice patterns is proposed, based on the Support Vector M...
Artificial Intelligence in form of Machine Learning classifiers is increasingly applied for travel c...
Many techniques including logistic regression and artificial intelligence have been employed to expl...
Mode choice analysis of school trips becomes important due to the fact that these trips contribute t...
Predicting the choice behavior of individuals is an important step in transportation planning. This ...
Travel demand models are required by transportation planners to predict the travel behaviour of peop...
In recent decades, transportation planning researchers have used diverse types of machine learning (...
AbstractTravel mode choice prediction of individuals is important in planning new transportation pro...
Background: A complex travel behaviour among users is intertwined with many factors. Traditionally, ...
The analysis of travel mode choice is an important task in transportation planning and policy making...
Understanding choice behavior regarding travel mode is essential in forecasting travel demand. Machi...
This study examines the factors that influence the mode choice of students in school trips using a m...
Because of declining enrollment and school closures in some German regions students have to choose a...
Even in a context of rapidly evolving transportation and information technologies, household travel ...
Traditional mode choice models consider travel modes of an individual in a consecutive trip to be in...
A new approach in recognizing travel mode choice patterns is proposed, based on the Support Vector M...
Artificial Intelligence in form of Machine Learning classifiers is increasingly applied for travel c...