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Unconstraining methods for revenue management systems under small demand

机译:小需求下收益管理系统的不受限制的方法

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摘要

Sales data often only represents a part of the demand for a service product owing to constraints such as capacity or booking limits. Unconstraining methods are concerned with estimating the true demand from such constrained sales data. This paper addresses the frequently encountered situation of observing only a few sales events at the individual product level and proposes variants of small demand forecasting methods to be used for unconstraining. The usual procedure is to aggregate data; however, in that case we lose information on when restrictions were imposed or lifted within a given booking profile. Our proposed methods exploit this information and are able to approximate convex, concave or homogeneous booking curves. Furthermore, they are numerically robust due to our proposed group-based parameter optimization. Empirical results on accuracy and revenue performance based on data from a major car rental company indicate revenue improvements over a best practice benchmark by statistically significant 0.5%-1.4% in typical scenarios.
机译:由于容量或预订限制之类的限制,销售数据通常仅代表对服务产品需求的一部分。不受约束的方法涉及根据这样的受约束的销售数据估计真实需求。本文介绍了在单个产品级别仅观察几个销售事件的经常遇到的情况,并提出了用于限制的小需求预测方法的变体。通常的步骤是汇总数据。但是,在那种情况下,我们会丢失有关何时在给定的预订资料中强加或取消限制的信息。我们提出的方法利用了这些信息,并且能够近似凸,凹或均质的预订曲线。此外,由于我们提出的基于组的参数优化,它们在数值上也很可靠。根据一家大型汽车租赁公司的数据得出的关于准确性和收益表现的实证结果表明,在典型情况下,与最佳实践基准相比,收益在统计上显着提高了0.5%-1.4%。

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