Litcius/Paper detail

Scalable Deep Reinforcement Learning for Ride-Hailing

Jiekun Feng, Mark Gluzman, J. G. Dai

2020IEEE Control Systems Letters11 citationsDOIOpen Access PDF

Abstract

Ride-hailing services, such as Didi Chuxing, Lyft, and Uber, arrange thousands of cars to meet ride requests throughout the day. We consider a Markov decision process (MDP) model of a ride-hailing service system, framing it as a reinforcement learning (RL) problem. The simultaneous control of many agents (cars) presents a challenge for the MDP optimization because the action space grows exponentially with the number of cars. We propose a special decomposition for the MDP actions by sequentially assigning tasks to the drivers. The new actions structure resolves the scalability problem and enables the use of deep RL algorithms for control policy optimization. We demonstrate the benefit of our proposed decomposition with numerical experiments, based on real data from Didi Chuxing.

Topics & Concepts

Reinforcement learningScalabilityMarkov decision processComputer scienceAutomated planning and schedulingDecompositionArtificial intelligenceMarkov processFraming (construction)EngineeringMathematicsDatabaseStatisticsEcologyStructural engineeringBiologyTransportation and Mobility InnovationsElectric Vehicles and InfrastructureEnergy, Environment, and Transportation Policies