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An investigation into machine learning approaches for forecasting spatio-temporal demand in ride-hailing service
Abstract
peer reviewedIn this paper, we present machine learning approaches for characterizing and forecasting the short-term demand for on-demand ride-hailing services. We propose the spatio-temporal estimation of the demand that is a function of variable e ects related to tra c, pricing and weather conditions. With respect to the methodology, a single decision tree, bootstrap-aggregated (bagged) decision trees, random forest, boosted decision trees, and arti cial neural network for regression have been adapted and systematically compared using various statistics, e.g. R-square, Root Mean Square Error (RMSE), and slope. To better assess the quality of the models, they have been tested on a real case study using the data of DiDi Chuxing, the main on-demand ride-hailing service provider in China. In the current study, 199,584 time-slots describing the spatio-temporal ride-hailing demand has been extracted with an aggregated-time interval of 10 mins. All the methods are trained and validated on the basis of two independent samples from this dataset. The results revealed that boosted decision trees provide the best prediction accuracy (RMSE=16.41), while avoiding the risk of over- tting, followed by arti cial neural network (20.09), random forest (23.50), bagged decision trees (24.29) and single decision tree (33.55)- journal article
- http://purl.org/coar/resource_type/c_6501
- info:eu-repo/semantics/article
- peer reviewed
- Business & economic sciences
- Special economic topics (health, labor, transportation...)
- Engineering, computing & technology
- Civil engineering
- Sciences économiques & de gestion
- Domaines particuliers de l’économie (santé, travail, transport...)
- Ingénierie, informatique & technologie
- Ingénierie civile