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Dynamic Procurement of New Products with Covariate Information: The Residual Tree Method

机译:具有协变量信息的新产品的动态采购:残树法

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摘要

Problem definition: We study the practice-motivated problem of dynamically procuring a new, short-life-cycle product under demand uncertainty. The firm does not know the demand for the new product but has data on similar products sold in the past, including demand histories and covariate information such as product characteristics. Academic/practical relevance: The dynamic procurement problem has long attracted academic and practitioner interest, and we solve it in an innovative data-driven way with proven theoretical guarantees. This work is also the first to leverage the power of covariate data in solving this problem. Methodology: We propose a new combined forecasting and optimization algorithm called the residual tree method and analyze its performance via epiconvergence theory and computations. Our method generalizes the classical scenario tree method by using covariates to link historical data on similar products to construct demand forecasts for the new product. Results: We prove, under fairly mild conditions, that the residual tree method is asymptotically optimal as the size of the data set grows. We also numerically validate the method for problem instances derived using data from the global fashion retailer Zara. We find that ignoring covariate information leads to systematic bias in the optimal solution, translating to a 6%-15% increase in the total cost for the problem instances under study. We also find that solutions based on trees using just two to three branches per node, which is common in the existing literature, are inadequate, resulting in 30%-66% higher total costs compared with our best solution. Managerial implications: The residual tree is a new and generalizable approach that uses past data on similar products to manage new product inventories. We also quantify the value of covariate information and of granular demand modeling.
机译:问题定义:我们研究了在需求不确定性下动态购买新的,具有短生命周期的产品的实践动机问题。该公司不知道对新产品的需求,但拥有过去出售过的类似产品的数据,包括需求历史和协变量信息(例如产品特性)。学术/实践相关性:动态采购问题长期以来引起了学术界和从业者的兴趣,我们以创新的数据驱动方式解决了这一问题,并提供了可靠的理论保证。这项工作也是首次利用协变量数据的功能来解决此问题。方法:我们提出了一种新的组合的预测和优化算法,称为残差树方法,并通过上收敛理论和计算分析了其性能。我们的方法通过使用协变量将相似产品的历史数据链接起来以构建新产品的需求预测,从而对经典情景树方法进行了概括。结果:我们证明,在相当温和的条件下,随着数据集规模的增长,残差树方法渐近最优。我们还对使用来自全球时装零售商Zara的数据得出的问题实例进行数字验证。我们发现忽略协变量信息会导致最优解决方案出现系统性偏差,这意味着所研究的问题实例的总成本增加了6%-15%。我们还发现,基于树的解决方案每个节点仅使用两到三个分支是不充分的,这在现有文献中很常见,与我们的最佳解决方案相比,导致总成本高出30%-66%。对管理的影响:剩余树是一种新的,可推广的方法,它使用相似产品上的过去数据来管理新产品库存。我们还量化了协变量信息和粒度需求建模的价值。

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