Abstract: In this paper, we study the travel mode choice of residents to determine the set of factors which can influence travel mode choice of residents and analyze the influence factor characteristics. Using Bayesian theory, we analyze the travel decision-making data of the residents, discrete them, and use them in Bayesian network structure learning and parameter estimation by K2 algorithm. We establish a Bayesian network simulation model to analyze the dependence probability relationship between the parent nodes and child nodes. Validation test was carried out for the building simulation model of Bayesian network. Data analysis results showed that the Bayesian network has a high accuracy prediction for actual travel mode choice of resid...
Several activity-based transportation models are now becoming operational and are entering the stage...
Travel mode selection is a crucial aspect of traffic distribution and forecasting in a comprehensive...
Background: A complex travel behaviour among users is intertwined with many factors. Traditionally, ...
In order to study the main factors affecting the behaviors that city residents make regarding public...
AbstractPrevious studies indicate that residential location and commute distance may influence indiv...
Providing personalized advice is an important objective in the development of advanced traveler info...
This paper describes the results of a study on the impact of lifecycle events on activity-travel cho...
Transport planning requires tool to model the current and future situation of an infrastructures net...
This paper develops a model, based on Bayesian beliefs networks, for representing mental maps and co...
In this work, we propose a Bayesian network approach by using structural restrictions and a model av...
This present study developed two predictive and associative Bayesian network models to forecast the ...
Traditional mode choice models consider travel modes of an individual in a consecutive trip to be in...
Tourists from abroad are increasing rapidly in Japan. Kawazu town in Izu Peninsula is famous for its...
Understanding choice behavior regarding travel mode is essential in forecasting travel demand. Machi...
Several activity-based transportation models are now becoming operational and are entering the stage...
Travel mode selection is a crucial aspect of traffic distribution and forecasting in a comprehensive...
Background: A complex travel behaviour among users is intertwined with many factors. Traditionally, ...
In order to study the main factors affecting the behaviors that city residents make regarding public...
AbstractPrevious studies indicate that residential location and commute distance may influence indiv...
Providing personalized advice is an important objective in the development of advanced traveler info...
This paper describes the results of a study on the impact of lifecycle events on activity-travel cho...
Transport planning requires tool to model the current and future situation of an infrastructures net...
This paper develops a model, based on Bayesian beliefs networks, for representing mental maps and co...
In this work, we propose a Bayesian network approach by using structural restrictions and a model av...
This present study developed two predictive and associative Bayesian network models to forecast the ...
Traditional mode choice models consider travel modes of an individual in a consecutive trip to be in...
Tourists from abroad are increasing rapidly in Japan. Kawazu town in Izu Peninsula is famous for its...
Understanding choice behavior regarding travel mode is essential in forecasting travel demand. Machi...
Several activity-based transportation models are now becoming operational and are entering the stage...
Travel mode selection is a crucial aspect of traffic distribution and forecasting in a comprehensive...
Background: A complex travel behaviour among users is intertwined with many factors. Traditionally, ...