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PKDD
2015
Springer

An Ensemble Learning Approach for the Kaggle Taxi Travel Time Prediction Challenge

8 years 7 months ago
An Ensemble Learning Approach for the Kaggle Taxi Travel Time Prediction Challenge
This paper describes the winning solution to the Taxi Trip Time Prediction Challenge run by Kaggle.com. The goal of the competition was to build a predictive framework that is able to predict the final destination and the total traveling time of taxi rides based on their (initial) partial trajectories. The available data consists of all taxi trips of 442 taxis running in the city of Porto within one year. The presented solution consists of an ensemble of expert models combined with a spatial clustering approach. The base classifiers consist of Random Forest Regressors where as the expert models for each test trip where based on a combination of gradient boosting and random forest. The paper shows how these models can be combined in order to generate accurate predictions of the remaining traveling time of a taxi.
Thomas Hoch
Added 16 Apr 2016
Updated 16 Apr 2016
Type Journal
Year 2015
Where PKDD
Authors Thomas Hoch
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