Augmenting Decisions of Taxi Drivers through Reinforcement Learning for Improving Revenues

Authors

  • Tanvi Verma Singapore Management University
  • Pradeep Varakantham Singapore Management University
  • Sarit Kraus Bar-Ilan University
  • Hoong Chuin Lau Singapore Management University

DOI:

https://doi.org/10.1609/icaps.v27i1.13846

Abstract

Taxis (which include cars working with car aggregation systems such as Uber, Grab, Lyft etc.) have become a critical component in the urban transportation. While most research and applications in the context of taxis have focused on improving performance from a customer perspective, in this paper, we focus on improving performance from a taxi driver perspective. Higher revenues for taxi drivers can help bring more drivers into the system thereby improving availability for customers in dense urban cities. Typically, when there is no customer on board, taxi drivers will cruise around to find customers either directly (on the street) or indirectly (due to a request from a nearby customer on phone or on aggregation systems). For such cruising taxis, we develop a Reinforcement Learning (RL) based system to learn from real trajectory logs of drivers to advise them on the right locations to find customers which maximize their revenue. There are multiple translational challenges involved in building this RL system based on real data, such as annotating the activities (e.g., roaming, going to a taxi stand, etc.) observed in trajectory logs, identifying the right features for a state, action space and evaluating against real driver performance observed in the dataset. We also provide a dynamic abstraction mechanism to improve the basic learning mechanism. Finally, we provide a thorough evaluation on a real world data set from a developed Asian city and demonstrate that an RL based system can provide significant benefits to the drivers.

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Published

2017-06-05

How to Cite

Verma, T., Varakantham, P., Kraus, S., & Lau, H. C. (2017). Augmenting Decisions of Taxi Drivers through Reinforcement Learning for Improving Revenues. Proceedings of the International Conference on Automated Planning and Scheduling, 27(1), 409-417. https://doi.org/10.1609/icaps.v27i1.13846