Urban dispersal events are processes where an unusually large number of people leave the same area in a short period. Early prediction of dispersal events is important in mitigating congestion and safety risks and making better dispatching decisions for taxi and ride-sharing fleets. Existing work mostly focuses on predicting taxi demand in the near future by learning patterns from historical data. However, they fail in case of abnormality because dispersal events with abnormally high demand are non-repetitive and violate common assumptions such as smoothness in demand change over time. Instead, in this paper we argue that dispersal events follow a complex pattern of trips and other related features in the past, which can be used to predict ...
Taxi demand prediction is an important building block to enabling intelligent transportation systems...
In the past few years, Deep learning has re-emerged as a powerful tool to solve complex problems and...
Mobility trace data typically includes historical information of the user's visited locations, which...
Human-flow pattern can reflect the urban population mobility and the urban operating state. Understa...
With an increased focus on minimizing traffic externalities in metropolitan areas, a growing interes...
Predicting taxi demand throughout a city can help to organize the taxi fleet and minimize the wait-t...
Big human mobility data are being continuously generated through a variety of sources, some of which...
Being able to accurately predict future taxi demand can beneficial not only for taxi companies but a...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
City-scale traffic prediction is an important task for public safety, traffic management, and deploy...
Taxi demand can be divided into pick-up demand and drop-off demand, which are firmly related to huma...
Economic and urban planning agencies have strong interest in tackling the hard problem of predicting...
© 2000-2011 IEEE. The accurate and timely destination prediction of taxis is of great importance for...
Knowledge of where vehicles will be in near future helps users in daily planning, traffic monitors i...
Urban mobility is an important driver for economic growth. However, many urban cities today are suff...
Taxi demand prediction is an important building block to enabling intelligent transportation systems...
In the past few years, Deep learning has re-emerged as a powerful tool to solve complex problems and...
Mobility trace data typically includes historical information of the user's visited locations, which...
Human-flow pattern can reflect the urban population mobility and the urban operating state. Understa...
With an increased focus on minimizing traffic externalities in metropolitan areas, a growing interes...
Predicting taxi demand throughout a city can help to organize the taxi fleet and minimize the wait-t...
Big human mobility data are being continuously generated through a variety of sources, some of which...
Being able to accurately predict future taxi demand can beneficial not only for taxi companies but a...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
City-scale traffic prediction is an important task for public safety, traffic management, and deploy...
Taxi demand can be divided into pick-up demand and drop-off demand, which are firmly related to huma...
Economic and urban planning agencies have strong interest in tackling the hard problem of predicting...
© 2000-2011 IEEE. The accurate and timely destination prediction of taxis is of great importance for...
Knowledge of where vehicles will be in near future helps users in daily planning, traffic monitors i...
Urban mobility is an important driver for economic growth. However, many urban cities today are suff...
Taxi demand prediction is an important building block to enabling intelligent transportation systems...
In the past few years, Deep learning has re-emerged as a powerful tool to solve complex problems and...
Mobility trace data typically includes historical information of the user's visited locations, which...