Litcius/Paper detail

Heterogeneous Attentions for Solving Pickup and Delivery Problem via Deep Reinforcement Learning

Jingwen Li, Liang Xin, Zhiguang Cao, Andrew Lim, Wen Song, Jie Zhang

2021IEEE Transactions on Intelligent Transportation Systems147 citationsDOIOpen Access PDF

Abstract

Recently, there is an emerging trend to apply deep reinforcement learning to solve the vehicle routing problem (VRP), where a learnt policy governs the selection of next node for visiting. However, existing methods could not handle well the pairing and precedence relationships in the pickup and delivery problem (PDP), which is a representative variant of VRP. To address this challenging issue, we leverage a novel neural network integrated with a heterogeneous attention mechanism to empower the policy in deep reinforcement learning to automatically select the nodes. In particular, the heterogeneous attention mechanism specifically prescribes attentions for each role of the nodes while taking into account the precedence constraint, i.e., the pickup node must precede the pairing delivery node. Further integrated with a masking scheme, the learnt policy is expected to find higher-quality solutions for solving PDP. Extensive experimental results show that our method outperforms the state-of-the-art heuristic and deep learning model, respectively, and generalizes well to different distributions and problem sizes.

Topics & Concepts

Reinforcement learningComputer scienceLeverage (statistics)Node (physics)Artificial intelligenceHeuristicDeep learningPickupDistributed computingEngineeringImage (mathematics)Structural engineeringTransportation and Mobility InnovationsVehicle Routing Optimization MethodsSmart Parking Systems Research