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TLDS: A Transfer-Learning-Based Delivery Station Location Selection Pipeline

机译:TLDS:基于转移的送货站位置选择管道

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Delivery stations play important roles in logistics systems. Well-designed delivery station planning can improve delivery efficiency significantly. However, existing delivery station locations are decided by experts, which requires much preliminary research and data collection work. It is not only time consuming but also expensive for logistics companies. Therefore, in this article, we propose a data-driven pipeline that can transfer expert knowledge among cities and automatically allocate delivery stations. Based on existing well-designed station location planning in the source city, we first train a model to learn the expert knowledge about delivery range selection for each station. Then we transfer the learned knowledge to a new city and design three strategies to select delivery stations for the new city. Due to the differences in characteristics among different cities, we adopt a transfer learning method to eliminate the domain difference so that the model can be adapted to a new city well. Finally, we conduct extensive experiments based on real-world datasets and find the proposed method can solve the problem well.
机译:送货局在物流系统中发挥重要作用。精心设计的送货站规划可以显着提高输送效率。然而,现有的送货站位置由专家决定,这需要初步研究和数据收集工作。它不仅耗时,而且对于物流公司也很贵。因此,在本文中,我们提出了一种数据驱动的管道,可以在城市之间传输专家知识并自动分配交付站。基于源城市现有精心设计的站点规划,我们首先培养模型来学习每个站的交付范围选择的专家知识。然后,我们将学众的知识转移到一个新的城市,并设计三种策略,为新城市选择送货车站。由于不同城市特征的差异,我们采用了传输学习方法来消除域差,使模型可以适应新城市。最后,我们基于现实世界数据集进行广泛的实验,并找到所提出的方法可以解决问题。

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