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Human solution strategies for the vehicle routing problem: Experimental findings and a choice-based theory

机译:车辆路径问题的人力解决方案策略:实验结果和基于选择的理论

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The vehicle routing problem is one of the classical problems in transportation science. Many algorithms have been proposed over the last decades, but the problem is still hard to solve, even for computers. We conduct a laboratory experiment to identify human solution strategies for the vehicle routing problem. Using a newly introduced discrete choice model, we show that humans tend to follow local-to-global problem-solving strategies, which involves a distinction between a first construction and a second improvement phase. When comparing the human performance with the optimal solution and classical heuristics (nearest neighbor, savings, and sweep), we see that participants typically perform better than the worst heuristic and worse than the best heuristic. Also, the combination of clustering and routing in the vehicle routing problem complicates finding good solutions compared to the traveling salesman problem, where particularly poor clustering leads to poor solutions. Especially participants with lower cognitive reflection test scores fail to identify good clusters and tend to use clusters that make the routing problem of a cluster easier. Moreover, only participants with a high cognitive reflection test score were able to improve solutions by using feedback on the current tour length. The other group even disimproved. Lastly, using the feedback option too often leads to a decline in performance which implies an overreaction of corrections made to an existing solution. (C) 2020 Elsevier Ltd. All rights reserved.
机译:车辆路由问题是交通科学的古典问题之一。在过去的几十年里已经提出了许多算法,但问题仍然很难解决,即使是计算机。我们进行实验室实验,以确定车辆路线问题的人类解决方案策略。使用新引进的离散选择模型,我们表明人类倾向于遵循本地到全局的解决问题策略,这涉及第一个结构和第二种改善阶段之间的区别。当利用最佳解决方案和经典启发式(最近的邻居,储蓄和扫描)比较人类性能时,我们看到参与者通常比最糟糕的启发式和更糟糕的启发式更好。此外,与旅行推销员问题相比,车辆路由问题中聚类和路由的组合使得发现良好的解决方案,特别差的聚类导致差的解决方案。特别是认知反射测试分数较低的参与者无法识别良好的集群,并且倾向于使用使集群的路由问题更容易的集群。此外,只有高认知反射测试得分的参与者能够通过使用对当前旅游长度的反馈来改善解决方案。其他群体甚至消化不爱。最后,使用反馈选项通常导致性能的下降,这意味着对现有解决方案的校正过度的过度反应。 (c)2020 elestvier有限公司保留所有权利。

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