Public transport smart cards are widely used around the world. However, while they provide information about various aspects of passenger behavior, they have not been properly exploited to predict demand. Indeed, traditional methods in economics employ linear unbiased estimators that pay little attention to accuracy, which is the main problem faced by the sector’s regulators. This paper reports the application of various supervised machine learning (SML) techniques to smart card data in order to forecast demand, and it compares these outcomes with traditional linear model estimates. We conclude that the forecasts obtained from these algorithms are much more accurate
Predictions on Public Transport (PT) ridership are beneficial as they allow for sufficient and cost-...
Predictions on Public Transport (PT) ridership are beneficial as they allow for sufficient and cost-...
To address the increasing passenger demand in the coming years and make public transport less crowde...
Public transport smart cards are widely used around the world. However, while they provide informati...
Public transport smart cards are widely used around the world. However, while they provide informati...
Public transport is essential for both residents and city planners because of its environmentally an...
Public transport is essential for both residents and city planners because of its environmentally an...
This article investigated machine learning models used to estimate passenger demand. These models ha...
Public transport is essential for both residents and city planners because of its environmentally an...
Urban mass transit systems generate large volumes of data via automated systems established for tick...
Urban mass transit systems generate large volumes of data via automated systems established for tick...
This article investigated machine learning models used to estimate passenger demand. These models ha...
Public transport operators are collecting massive amounts of data from smart card systems. In the Ne...
Public transport operators are collecting massive amounts of data from smart card systems. In the Ne...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Predictions on Public Transport (PT) ridership are beneficial as they allow for sufficient and cost-...
Predictions on Public Transport (PT) ridership are beneficial as they allow for sufficient and cost-...
To address the increasing passenger demand in the coming years and make public transport less crowde...
Public transport smart cards are widely used around the world. However, while they provide informati...
Public transport smart cards are widely used around the world. However, while they provide informati...
Public transport is essential for both residents and city planners because of its environmentally an...
Public transport is essential for both residents and city planners because of its environmentally an...
This article investigated machine learning models used to estimate passenger demand. These models ha...
Public transport is essential for both residents and city planners because of its environmentally an...
Urban mass transit systems generate large volumes of data via automated systems established for tick...
Urban mass transit systems generate large volumes of data via automated systems established for tick...
This article investigated machine learning models used to estimate passenger demand. These models ha...
Public transport operators are collecting massive amounts of data from smart card systems. In the Ne...
Public transport operators are collecting massive amounts of data from smart card systems. In the Ne...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Predictions on Public Transport (PT) ridership are beneficial as they allow for sufficient and cost-...
Predictions on Public Transport (PT) ridership are beneficial as they allow for sufficient and cost-...
To address the increasing passenger demand in the coming years and make public transport less crowde...