Publication | Open Access
Multi-Decoder Attention Model with Embedding Glimpse for Solving Vehicle Routing Problems
108
Citations
26
References
2021
Year
Artificial IntelligenceEngineeringMachine LearningNovel Deep ReinforcementSequential LearningMulti-decoder Attention ModelIntelligent SystemsRecurrent Neural NetworkNatural Language ProcessingVehicle RoutingMulti-task LearningVisual Question AnsweringRobot LearningEmbedding GlimpseComputer ScienceDeep LearningNeural Architecture SearchVehicle Routing ProblemsDeep Reinforcement LearningConstruction HeuristicsVehicle Routing Problem
We present a novel deep reinforcement learning method to learn construction heuristics for vehicle routing problems. In specific, we propose a Multi-Decoder Attention Model (MDAM) to train multiple diverse policies, which effectively increases the chance of finding good solutions compared with existing methods that train only one policy. A customized beam search strategy is designed to fully exploit the diversity of MDAM. In addition, we propose an Embedding Glimpse layer in MDAM based on the recursive nature of construction, which can improve the quality of each policy by providing more informative embeddings. Extensive experiments on six different routing problems show that our method significantly outperforms the state-of-the-art deep learning based models.
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