Accurate taxi demand prediction can solve the congestion problem caused by the supply-demand imbalance. However, most taxi demand studies are based on historical taxi trajectory data. In this study, we detected hotspots and proposed three methods to predict the taxi demand in hotspots. Next, we compared the predictive effect of the random forest model (RFM), ridge regression model (RRM), and combination forecasting model (CFM). Thereafter, we considered environmental and meteorological factors to predict the taxi demand in hotspots. Finally, the importance of indicators was analyzed, and the essential elements were the time, temperature, and weather factors. The results indicate that the prediction effect of CFM is better than those of RFM ...
The growth of urban areas has made taxi service become increasingly more popular due to its ubiquity...
In this thesis a model capable of predicting taxidemand with high accuracy across five different rea...
Rebalancing a bike sharing system involves removing bikes from oversubscribed stations and putting t...
Adverse weathers are well-known to impact the operation of transportation systems, including taxis. ...
It has been estimated that over 23 thousand licensed taxis in Singapore are not occupied around 50 p...
Being able to accurately predict future taxi demand can beneficial not only for taxi companies but a...
It has been estimated that over 23 thousand licensed taxis in Singapore are not occupied around 50 p...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Taxi order demand prediction is of tremendous importance for continuous upgrading of an intelligent ...
Taxi demand can be divided into pick-up demand and drop-off demand, which are firmly related to huma...
The spatio-temporal variations in demand for transportation, particularly taxis, are impacted by var...
The spatio-temporal variations in demand for transportation, particularly taxis, are impacted by var...
Taxi demand forecasting is crucial to building an efficient transportation system in a smart city. A...
peer reviewedIn this paper, we present machine learning approaches for characterizing and forecastin...
Acknowledgements Portions of this research were funded through the projects of the National Natural ...
The growth of urban areas has made taxi service become increasingly more popular due to its ubiquity...
In this thesis a model capable of predicting taxidemand with high accuracy across five different rea...
Rebalancing a bike sharing system involves removing bikes from oversubscribed stations and putting t...
Adverse weathers are well-known to impact the operation of transportation systems, including taxis. ...
It has been estimated that over 23 thousand licensed taxis in Singapore are not occupied around 50 p...
Being able to accurately predict future taxi demand can beneficial not only for taxi companies but a...
It has been estimated that over 23 thousand licensed taxis in Singapore are not occupied around 50 p...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Taxi order demand prediction is of tremendous importance for continuous upgrading of an intelligent ...
Taxi demand can be divided into pick-up demand and drop-off demand, which are firmly related to huma...
The spatio-temporal variations in demand for transportation, particularly taxis, are impacted by var...
The spatio-temporal variations in demand for transportation, particularly taxis, are impacted by var...
Taxi demand forecasting is crucial to building an efficient transportation system in a smart city. A...
peer reviewedIn this paper, we present machine learning approaches for characterizing and forecastin...
Acknowledgements Portions of this research were funded through the projects of the National Natural ...
The growth of urban areas has made taxi service become increasingly more popular due to its ubiquity...
In this thesis a model capable of predicting taxidemand with high accuracy across five different rea...
Rebalancing a bike sharing system involves removing bikes from oversubscribed stations and putting t...