Understanding individual travel behavior is vital in travel demand management as well as in urban and transportation planning. New data sources including mobile phone data and location-based social media (LBSM) data allow us to understand mobility behavior on an unprecedented level of details. Recent studies of trip purpose prediction tend to use machine learning (ML) methods, since they generally produce high levels of predictive accuracy. Few studies used LSBM as a large data source to extend its potential in predicting individual travel destination using ML techniques. In the presented research, we created a spatio-temporal probabilistic model based on an ensemble ML framework named “Random Forests” utilizing the travel extracted from ge...
An understanding of people’s travel behavior is important for a functional design of transportation ...
Technological advances have led to an increasing development of data sources. Since the introduction...
Travel demand estimation, as represented by an origin–destination (OD) matrix, is essential for urba...
This work investigates whether the user-generated data from multiple sources, such as smart cards an...
Thesis (Master's)--University of Washington, 2022The rise of technology and the internet provides po...
Tourism related travels have significant impacts on transportation infrastructures, especially in la...
2017Final ReportPDFTech Report49198-46-28Data collectionIntelligent transportation systemsLand useMo...
Recent advances in communication technologies have enabled researchers to collect travel data based ...
Understanding and predicting human mobility is a crucial component of transportation planning and ma...
An understanding of people’s travel behavior is important for a functional design of transportation ...
An understanding of people’s travel behavior is important for a functional design of transportation ...
In this research, we propose a series of models designed to take advantage of the availability of da...
Understanding of predictability in human mobility benefits a broad spectrum such as urban planning a...
Local and regional planners struggle to keep up with rapid changes in mobility patterns. This explor...
An understanding of people’s travel behavior is important for a functional design of transportation ...
An understanding of people’s travel behavior is important for a functional design of transportation ...
Technological advances have led to an increasing development of data sources. Since the introduction...
Travel demand estimation, as represented by an origin–destination (OD) matrix, is essential for urba...
This work investigates whether the user-generated data from multiple sources, such as smart cards an...
Thesis (Master's)--University of Washington, 2022The rise of technology and the internet provides po...
Tourism related travels have significant impacts on transportation infrastructures, especially in la...
2017Final ReportPDFTech Report49198-46-28Data collectionIntelligent transportation systemsLand useMo...
Recent advances in communication technologies have enabled researchers to collect travel data based ...
Understanding and predicting human mobility is a crucial component of transportation planning and ma...
An understanding of people’s travel behavior is important for a functional design of transportation ...
An understanding of people’s travel behavior is important for a functional design of transportation ...
In this research, we propose a series of models designed to take advantage of the availability of da...
Understanding of predictability in human mobility benefits a broad spectrum such as urban planning a...
Local and regional planners struggle to keep up with rapid changes in mobility patterns. This explor...
An understanding of people’s travel behavior is important for a functional design of transportation ...
An understanding of people’s travel behavior is important for a functional design of transportation ...
Technological advances have led to an increasing development of data sources. Since the introduction...
Travel demand estimation, as represented by an origin–destination (OD) matrix, is essential for urba...