In this report a machine learning method using artificial neural networks to estimate taxi demand in different geographical zones in the city of Stockholm is proposed. An attempt to determine the most important input features that affect taxi ridership is performed and a network architecture is conceived and trained using taxi ridership data from a major taxi company operating in the city. The results show that except for the two basic input parameters, the hour of the day and the zone, the day of the week is clearly the most important factor. Also days after payment and month of the year seems to be mildly relevant factors while rain and temperature hardly affect the results at all. The final network model conceived was capable of estimati...
Being able to accurately predict future taxi demand can beneficial not only for taxi companies but a...
This paper is concerned with the modeling of the complex demand-supply relationship in urban taxi se...
In this thesis a model capable of predicting taxidemand with high accuracy across five different rea...
In this report a machine learning method using artificial neural networks to estimate taxi demand in...
In this report a machine learning method using artificial neural networks to estimate taxi demand in...
In this report a machine learning method using artificial neural networks to estimate taxi demand in...
Taxi Stockholm is a Swedish taxi company which would like to improve their mobile phone application ...
Taxi Stockholm is a Swedish taxi company which would like to improve their mobile phone application ...
Taxi Stockholm is a Swedish taxi company which would like to improve their mobile phone application ...
Supplying the right amount of taxis in the right place at the right time is very important for taxi ...
Supplying the right amount of taxis in the right place at the right time is very important for taxi ...
Supplying the right amount of taxis in the right place at the right time is very important for taxi ...
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...
Public transport is essential for both residents and city planners because of its environmentally an...
Being able to accurately predict future taxi demand can beneficial not only for taxi companies but a...
This paper is concerned with the modeling of the complex demand-supply relationship in urban taxi se...
In this thesis a model capable of predicting taxidemand with high accuracy across five different rea...
In this report a machine learning method using artificial neural networks to estimate taxi demand in...
In this report a machine learning method using artificial neural networks to estimate taxi demand in...
In this report a machine learning method using artificial neural networks to estimate taxi demand in...
Taxi Stockholm is a Swedish taxi company which would like to improve their mobile phone application ...
Taxi Stockholm is a Swedish taxi company which would like to improve their mobile phone application ...
Taxi Stockholm is a Swedish taxi company which would like to improve their mobile phone application ...
Supplying the right amount of taxis in the right place at the right time is very important for taxi ...
Supplying the right amount of taxis in the right place at the right time is very important for taxi ...
Supplying the right amount of taxis in the right place at the right time is very important for taxi ...
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...
Public transport is essential for both residents and city planners because of its environmentally an...
Being able to accurately predict future taxi demand can beneficial not only for taxi companies but a...
This paper is concerned with the modeling of the complex demand-supply relationship in urban taxi se...
In this thesis a model capable of predicting taxidemand with high accuracy across five different rea...