Learn and route: learning implicit preferences for vehicle routing

Rocsildes Canoy, Víctor Bucarey, Jayanta Mandi, Tias Guns
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Abstract

Abstract We investigate a learning decision support system for vehicle routing, where the routing engine learns implicit preferences that human planners have when manually creating route plans (or routings ). The goal is to use these learned subjective preferences on top of the distance-based objective criterion in vehicle routing systems. This is an alternative to the practice of distinctively formulating a custom vehicle routing problem (VRP) for every company with its own routing requirements. Instead, we assume the presence of past vehicle routing solutions over similar sets of customers, and learn to make similar choices. The learning approach is based on the concept of learning a Markov model, which corresponds to a probabilistic transition matrix, rather than a deterministic distance matrix. This nevertheless allows us to use existing arc routing VRP software in creating the actual routings, and to optimize over both distances and preferences at the same time. For the learning, we explore different schemes to construct the probabilistic transition matrix that can co-evolve with changing preferences over time. Our results on randomly generated instances and on a use-case with a small transportation company show that our method is able to generate results that are close to the manually created solutions, without needing to characterize all constraints and sub-objectives explicitly. Even in the case of changes in the customer sets, our approach is able to find solutions that are closer to the actual routings than when using only distances, and hence, solutions that require fewer manual changes when transformed into practical routings.

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学习和路线:学习车辆路线的隐性偏好
我们研究了一个用于车辆路线的学习决策支持系统,其中路线引擎学习人类规划者在手动创建路线计划(或路线)时的隐式偏好。目标是在车辆路线系统中使用基于距离的客观标准之上使用这些学习到的主观偏好。这是为每个有自己的路线需求的公司独特地制定自定义车辆路线问题(VRP)的实践的替代方案。相反,我们假设过去的车辆路线解决方案存在于类似的客户集合中,并学习做出类似的选择。学习方法基于学习马尔可夫模型的概念,该模型对应于概率转移矩阵,而不是确定性距离矩阵。然而,这允许我们使用现有的弧线路由VRP软件来创建实际的路由,并同时对距离和偏好进行优化。对于学习,我们探索了不同的方案来构建概率转移矩阵,该矩阵可以随时间变化的偏好共同进化。我们在随机生成的实例和一个小型运输公司的用例上的结果表明,我们的方法能够生成接近于手动创建的解决方案的结果,而不需要明确地描述所有约束和子目标。即使在客户集发生变化的情况下,我们的方法也能够找到比仅使用距离时更接近实际路由的解决方案,因此,在转换为实际路由时需要更少的手动更改的解决方案。
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