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Two-Phase Newsvendor with Optimally Timed Additional Replenishment: Model, Algorithm, Case Study

机译:两阶段NewsVendor具有最佳定时的额外补充:模型,算法,案例研究

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Recent advancements in Information Technology have provided an opportunity to significantly improve the effectiveness of inventory systems. The use of in-cycle demand information enables faster reaction to demand fluctuations. In particular, for the newsvendor (NV) system, we exploit the newly available data to perform an additional review (AR) of inventory at an endogenously determined, a priori set time during the sales period, and perform an additional replenishment if necessary. We implemented our innovative model at a market-leading media group. The results of the initial pilot were dramatic, indicating that the proposed model achieves an increase of 4%-24% in profits compared to the policy before implementation. As a result, the company started following the proposed model for all their printed magazines and observed a significant reduction in operational costs. In a generalized setting, we provide a tractable search-based optimization algorithm, based on the problem's structural properties, for determining the optimal initial quantity, AR timing, and quantity to restock at that time. Based on these theoretical results, we propose a simple heuristic that can be used for many practical situations including our implementation at Yedioth. Through a computational experiment, we show that our algorithm finds the optimal solution quickly and that the proposed heuristic performs well. We also provide additional insights into the problem-for instance, that our system exhibits properties similar to inventory pooling, provided that the demand rate is large enough.
机译:信息技术的最新进步提供了机会,可以显着提高库存系统的有效性。使用内循环需求信息使得能够更快地反应需求波动。特别是对于新闻维护者(NV)系统,我们利用新可用的数据在内遗工确定的先验集中,在销售期间执行了另外的审查(AR),并在必要时进行额外的补货。我们在市场领先的媒体集团中实施了我们的创新模式。最初的飞行员的结果是戏剧性的,表明,与实施之前,拟议的模式达到了利润增加了4%-24%。因此,该公司开始关注所有印刷杂志的拟议模型,并观察到运营成本显着降低。在广义的设置中,我们提供了一种基于Tractable搜索的优化算法,基于问题的结构属性,用于确定当时恢复的最佳初始数量,AR时间和数量。根据这些理论结果,我们提出了一种简单的启发式,可用于许多实际情况,包括我们在Yedioth的实施。通过计算实验,我们表明我们的算法快速找到最佳解决方案,并且提出的启发式表现良好。我们还向问题提供额外的见解 - 例如,我们的系统表现出类似于库存汇集的属性,只要需求率足够大。

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