A Deep Value-network Based Approach for Multi-Driver Order Dispatching
Xiaocheng Tang, Zhiwei Qin, Fan Zhang, Zhaodong Wang, Zhe Xu, Yintai, Ma, Hongtu Zhu, Jieping Ye

TL;DR
This paper introduces a deep reinforcement learning approach using Cerebellar Value Networks for multi-driver ride dispatching, demonstrating significant improvements in driver income and user experience through large-scale online tests and transfer learning.
Contribution
It proposes a novel CVNet architecture with a distributed state representation and regularized policy evaluation, enhancing stability and robustness in ride dispatching tasks.
Findings
CVNet outperforms recent dispatching methods in offline simulations.
Online A/B tests show significant improvements in driver income and user experience.
Transfer learning further boosts dispatching performance across cities.
Abstract
Recent works on ride-sharing order dispatching have highlighted the importance of taking into account both the spatial and temporal dynamics in the dispatching process for improving the transportation system efficiency. At the same time, deep reinforcement learning has advanced to the point where it achieves superhuman performance in a number of fields. In this work, we propose a deep reinforcement learning based solution for order dispatching and we conduct large scale online A/B tests on DiDi's ride-dispatching platform to show that the proposed method achieves significant improvement on both total driver income and user experience related metrics. In particular, we model the ride dispatching problem as a Semi Markov Decision Process to account for the temporal aspect of the dispatching actions. To improve the stability of the value iteration with nonlinear function approximators like…
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Taxonomy
TopicsTransportation and Mobility Innovations · Traffic control and management · Transportation Planning and Optimization
