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Dynamic Inventory Management with Learning About the Demand Distribution and Substitution Probability

机译:了解需求分布和替代概率的动态库存管理

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Awell-known result in the Bayesian inventory management literature is: If lost sales are not observed, the Bayesian optimal inventory level is larger than the myopic inventory level (one should "stock more" to learn about the demand distribution). This result has been proven in other studies under the assumption that inventory is perishable, so the myopic inventory level is equal to the Bayesian optimal inventory level with observed lost sales. We break that equivalence by considering nonperishable inventory. We prove that with nonperishable inventory, the famous "stock more" result is often reversed to "stock less," in that the Bayesian optimal inventory level with unobserved lost sales is lower than the myopic inventory level. We also prove that making lost sales unobservable increases the Bayesian optimal inventory level; in this specific sense, the famous "stock more" result of other studies generalizes to the case of nonperishable inventory. nnWhen the product is out of stock, a customer may accept a substitute or choose not to purchase. We incorporate learning about the probability of substitution. This reduces the Bayesian optimal inventory level in the case that lost sales are observed. Reducing the inventory level has two beneficial effects: to observe and learn more about customer substitution behavior and (for a nonperishable product) to reduce the probability of overstocking in subsequent periods. nnFinally, for a capacitated production-inventory system under continuous review, we derive maximum likelihood estimators (MLEs) of the demand rate and probability that customers will wait for the product. (Accepting a raincheck for delivery at some later time is a common type of substitution.) We investigate how the choice of base-stock level and production rate affect the convergence rate of these MLEs. The results reinforce those for the Bayesian, uncapacitated, periodic review system
机译:贝叶斯库存管理文献中一个众所周知的结果是:如果未观察到销售损失,则贝叶斯最优库存水平大于近视库存水平(应该“增加库存”以了解需求分布)。在其他研究中,假设存货容易腐烂,因此该结果已得到证明,因此在观察到销售损失的情况下,近视存货水平等于贝叶斯最优存货水平。我们通过考虑不易腐烂的库存来打破这种等同关系。我们证明,在不易腐烂的库存情况下,著名的“库存过多”结果通常会反转为“库存减少”,这是因为未观察到销售损失的贝叶斯最优库存水平低于近视库存水平。我们还证明,使损失的损失无法观察到可以提高贝叶斯最优库存水平;在这种特定意义上,其他研究的著名的“更多库存”结果推广到了不易腐烂的库存情况。 nn产品缺货时,客户可以接受替代产品或选择不购买。我们纳入有关替代概率的学习。在观察到销售损失的情况下,这降低了贝叶斯最优库存水平。降低库存水平有两个有益的效果:观察和了解有关客户替代行为的更多信息,以及(对于不易腐烂的产品)减少后续期间积压的可能性。 nn最后,对于持续审查的功能强大的生产库存系统,我们得出了需求率的最大似然估计量(MLE)和客户等待产品的概率。 (在以后的某个时间接受雨水交接是一种常见的替代方法。)我们研究了基础库存水平和生产率的选择如何影响这些MLE的收敛速度。结果加强了贝叶斯,无能力,定期审查系统的结果

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