Smart City Gnosys

Smart city article details

Title A Model Stacking Approach For Ride-Hailing Demand Forecasting : A Case Study Of Algiers
ID_Doc 2708
Authors Boumeddane S.; Hamdad L.; El-Feda Bouregag A.A.; Damene M.; Sadeg S.
Year 2021
Published 2020 2nd International Workshop on Human-Centric Smart Environments for Health and Well-Being, IHSH 2020
DOI http://dx.doi.org/10.1109/IHSH51661.2021.9378731
Abstract A good understanding of supply of taxis drivers and demand of passengers through the forecasting of future demands is important for an intelligent transportation system in smart cities. A good prediction allows a better allocation of taxi fleets, reduce passengers' waiting time and energy waste for taxis. In this paper, we harness the power of statistical and machine learning models in a joint ensemble model and propose a stacking approach which combines the predictions of ARIMA, SARIMA, MLP, LSTM and XGBoost. Our proposed approach consider also external factors such weather conditions and national holidays. We consider in this work the city of Algiers as a case study, using ride hailing data of an Algerian ride-hailing platform. Experimental results show that our model performed better than the selected baseline statistical and machine learning algorithms. © 2021 IEEE.
Author Keywords demand forecasting; Ride-hailing services; spatiotemporal data; time series


Similar Articles


Id Similarity Authors Title Published
2199 View0.885Liu X.-H.; Guo L.-M.; Yang B.-W.A Hybrid Network Model Based On The Construction Of Virtual Service Areas For Taxi Demand Prediction4th International Conference on Intelligent Robotics and Control Engineering, IRCE 2021 (2021)
36074 View0.883Munawar A.; Piantanakulchai M.Machine Learning-Driven Passenger Demand Forecasting For Autonomous Taxi Transportation Systems In Smart CitiesExpert Systems, 42, 3 (2025)
60161 View0.88Wu Y.; Zhang H.; Li C.; Tao S.; Yang F.Urban Ride-Hailing Demand Prediction With Multi-View Information Fusion Deep Learning FrameworkApplied Intelligence, 53, 8 (2023)
54463 View0.862Askari B.; Le Quy T.; Ntoutsi E.Taxi Demand Prediction Using An Lstm-Based Deep Sequence Model And Points Of InterestProceedings - 2020 IEEE 44th Annual Computers, Software, and Applications Conference, COMPSAC 2020 (2020)
34948 View0.862Gao J.; Li X.; Wang C.; Huang X.Learning-Based Open Driver Guidance And Rebalancing For Reducing Riders' Wait Time In Ride-Hailing Platforms2020 IEEE International Smart Cities Conference, ISC2 2020 (2020)
711 View0.86Munawar A.; Piantanakulchai M.A Collaborative Privacy-Preserving Approach For Passenger Demand Forecasting Of Autonomous Taxis Empowered By Federated Learning In Smart CitiesScientific Reports, 14, 1 (2024)
16383 View0.857Liu Z.; Liu X.; Wang Y.; Yan X.Coupling Travel Characteristics Identifying And Deep Learning For Demand Forecasting On Car-Hailing Tourists: A Case Study Of Beijing, ChinaIET Intelligent Transport Systems, 18, 4 (2024)
3322 View0.857Wu Z.; Lian G.A Novel Dynamically Adjusted Regressor Chain For Taxi Demand PredictionProceedings of the International Joint Conference on Neural Networks (2020)
52828 View0.852Bhanu M.; Priya S.; Moreira J.M.; Chandra J.St-Agp: Spatio-Temporal Aggregator Predictor Model For Multi-Step Taxi-Demand Prediction In CitiesApplied Intelligence, 53, 2 (2023)