Deep Reinforcement Learning with Knowledge Transfer for Online Rides Order Dispatching

Zhaodong Wang, Zhiwei Qin, Xiaocheng Tang, Jieping Ye, Hongtu Zhu
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引用次数: 85

Abstract

Ride dispatching is a central operation task on a ride-sharing platform to continuously match drivers to trip-requesting passengers. In this work, we model the ride dispatching problem as a Markov Decision Process and propose learning solutions based on deep Q-networks with action search to optimize the dispatching policy for drivers on ride-sharing platforms. We train and evaluate dispatching agents for this challenging decision task using real-world spatio-temporal trip data from the DiDi ride-sharing platform. A large-scale dispatching system typically supports many geographical locations with diverse demand-supply settings. To increase learning adaptability and efficiency, we propose a new transfer learning method Correlated Feature Progressive Transfer, along with two existing methods, enabling knowledge transfer in both spatial and temporal spaces. Through an extensive set of experiments, we demonstrate the learning and optimization capabilities of our deep reinforcement learning algorithms. We further show that dispatching policies learned by transferring knowledge from a source city to target cities or across temporal space within the same city significantly outperform those without transfer learning.
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基于知识转移的深度强化学习在在线订单调度中的应用
拼车调度是拼车平台的核心运营任务,它将司机与要求出行的乘客持续匹配。在这项工作中,我们将乘车调度问题建模为一个马尔可夫决策过程,并提出了基于深度q网络和动作搜索的学习解决方案,以优化乘车共享平台上的司机调度策略。我们使用来自滴滴出行共享平台的真实时空出行数据来训练和评估调度代理,以完成这一具有挑战性的决策任务。大型调度系统通常支持具有不同需求供应设置的许多地理位置。为了提高学习的适应性和效率,我们提出了一种新的迁移学习方法——关联特征渐进式迁移,并结合已有的两种方法,实现了知识在空间和时间上的迁移。通过一系列广泛的实验,我们展示了我们的深度强化学习算法的学习和优化能力。研究进一步表明,通过将知识从源城市迁移到目标城市或在同一城市内跨时空迁移来学习的调度策略显著优于不进行迁移学习的调度策略。
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