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A Reinforcement Learning Approach for Inventory Replenishment in Vendor-Managed Inventory Systems With Consignment Inventory

机译:带寄售库存的供应商管理库存系统中库存补货的强化学习方法

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In a Vendor-Managed Inventory (VMI) system, the supplier makes decisions of inventory management for the retailer; the retailer is not responsible for placing orders. There is a dearth of optimization models for replenishment strategies for VMI systems, and the industry relies on well-understood, but simple models, e.g., the newsvendor rule. In this article, we propose a methodology based on reinforcement learning, which is rooted in the Bellman equation, to determine a replenishment policy in a VMI system with consignment inventory. We also propose rules based on the newsvendor rule. Our numerical results show that our approach can outperform the newsvendor.
机译:在供应商管理的库存(VMI)系统中,供应商为零售商做出库存管理的决策;零售商不负责下订单。 VMI系统的补货策略缺乏最优化模型,行业依赖于易于理解但简单的模型,例如新闻供应商规则。在本文中,我们提出了一种基于强化学习的方法,该方法植根于Bellman方程,用于确定带有寄售库存的VMI系统中的补货策略。我们还根据新闻供应商规则提出规则。我们的数值结果表明,我们的方法可以胜过新闻供应商。

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