Analytics and Machine Learning in Vehicle Routing Research

The Vehicle Routing Problem (VRP) is one of the most intensively studied combinatorial optimisation problems for which numerous models and algorithms have been proposed. To tackle the complexities, uncertainties and dynamics involved in real-world VRP applications, Machine Learning (ML) methods have...

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Hauptverfasser: Bai, Ruibin, Chen, Xinan, Chen, Zhi-Long, Cui, Tianxiang, Gong, Shuhui, He, Wentao, Jiang, Xiaoping, Jin, Huan, Jin, Jiahuan, Kendall, Graham, Li, Jiawei, Lu, Zheng, Ren, Jianfeng, Weng, Paul, Xue, Ning, Zhang, Huayan
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creator Bai, Ruibin
Chen, Xinan
Chen, Zhi-Long
Cui, Tianxiang
Gong, Shuhui
He, Wentao
Jiang, Xiaoping
Jin, Huan
Jin, Jiahuan
Kendall, Graham
Li, Jiawei
Lu, Zheng
Ren, Jianfeng
Weng, Paul
Xue, Ning
Zhang, Huayan
description The Vehicle Routing Problem (VRP) is one of the most intensively studied combinatorial optimisation problems for which numerous models and algorithms have been proposed. To tackle the complexities, uncertainties and dynamics involved in real-world VRP applications, Machine Learning (ML) methods have been used in combination with analytical approaches to enhance problem formulations and algorithmic performance across different problem solving scenarios. However, the relevant papers are scattered in several traditional research fields with very different, sometimes confusing, terminologies. This paper presents a first, comprehensive review of hybrid methods that combine analytical techniques with ML tools in addressing VRP problems. Specifically, we review the emerging research streams on ML-assisted VRP modelling and ML-assisted VRP optimisation. We conclude that ML can be beneficial in enhancing VRP modelling, and improving the performance of algorithms for both online and offline VRP optimisations. Finally, challenges and future opportunities of VRP research are discussed.
doi_str_mv 10.48550/arxiv.2102.10012
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subjects Computer Science - Artificial Intelligence
Computer Science - Learning
Mathematics - Optimization and Control
title Analytics and Machine Learning in Vehicle Routing Research
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