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Solving the Traveling Salesperson Problem with Precedence Constraints by Deep Reinforcement Learning

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arxiv 2207.01443 v2 pith:3T4K4FK6 submitted 2022-07-04 cs.LG math.OC

Solving the Traveling Salesperson Problem with Precedence Constraints by Deep Reinforcement Learning

classification cs.LG math.OC
keywords attentionsproblemrecentsolvingtsppcworkapproachesconstraints
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This work presents solutions to the Traveling Salesperson Problem with precedence constraints (TSPPC) using Deep Reinforcement Learning (DRL) by adapting recent approaches that work well for regular TSPs. Common to these approaches is the use of graph models based on multi-head attention (MHA) layers. One idea for solving the pickup and delivery problem (PDP) is using heterogeneous attentions to embed the different possible roles each node can take. In this work, we generalize this concept of heterogeneous attentions to the TSPPC. Furthermore, we adapt recent ideas to sparsify attentions for better scalability. Overall, we contribute to the research community through the application and evaluation of recent DRL methods in solving the TSPPC.

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