Learning Model-Based Vehicle-Relocation Decisions for Real-Time Ride-Sharing: Hybridizing Learning and Optimization
Enpeng Yuan, Pascal Van Hentenryck

TL;DR
This paper introduces a hybrid learning-optimization approach for vehicle relocation in ride-sharing, enabling longer planning horizons and improved service quality by reducing computational complexity.
Contribution
It proposes a novel hybrid method that combines machine learning with optimization to efficiently solve long-horizon vehicle relocation problems in ride-sharing.
Findings
Significantly reduces rider waiting times.
Achieves better service quality than traditional MPC.
Enables longer planning horizons with polynomial-time computation.
Abstract
Large-scale ride-sharing systems combine real-time dispatching and routing optimization over a rolling time horizon with a model predictive control (MPC) component that relocates idle vehicles to anticipate the demand. The MPC optimization operates over a longer time horizon to compensate for the inherent myopic nature of the real-time dispatching. These longer time horizons are beneficial for the quality of relocation decisions but increase computational complexity. Consequently, the ride-sharing operators are often forced to use a relatively short time horizon. To address this computational challenge, this paper proposes a hybrid approach that combines machine learning and optimization. The machine-learning component learns the optimal solution to the MPC on the aggregated level to overcome the sparsity and high-dimensionality of the solution. The optimization component transforms the…
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Taxonomy
TopicsTransportation and Mobility Innovations · Transportation Planning and Optimization · Smart Parking Systems Research
Methodstravel james
