Demand Learning and Pricing for Varying Assortments

K. Ferreira, Emily Mower
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引用次数: 2

Abstract

Problem definition: We consider the problem of demand learning and pricing for retailers who offer assortments of substitutable products that change frequently, for example, due to limited inventory, perishable or time-sensitive products, or the retailer’s desire to frequently offer new styles. Academic/practical relevance: We are one of the first to consider the demand learning and pricing problem for retailers who offer product assortments that change frequently, and we propose and implement a learn-then-earn algorithm for use in this setting. Our algorithm prioritizes a short learning phase, an important practical characteristic that is only considered by few other algorithms. Methodology: We develop a novel demand learning and pricing algorithm that learns quickly in an environment with varying assortments and limited price changes by adapting the commonly used marketing technique of conjoint analysis to our setting. We partner with Zenrez, an e-commerce company that partners with fitness studios to sell excess capacity of fitness classes, to implement our algorithm in a controlled field experiment to evaluate its effectiveness in practice using the synthetic control method. Results: Relative to a control group, our algorithm led to an expected initial dip in revenue during the learning phase, followed by a sustained and significant increase in average daily revenue of 14%–18% throughout the earning phase, illustrating that our algorithmic contributions can make a significant impact in practice. Managerial implications: The theoretical benefit of demand learning and pricing algorithms is well understood—they allow retailers to optimally match supply and demand in the face of uncertain preseason demand. However, most existing demand learning and pricing algorithms require substantial sales volume and the ability to change prices frequently for each product. Our work provides retailers who do not have this luxury a powerful demand learning and pricing algorithm that has been proven in practice.
不同分类的需求学习与定价
问题定义:我们考虑零售商的需求学习和定价问题,这些零售商提供频繁变化的可替代产品,例如,由于库存有限,易腐烂或时间敏感的产品,或者零售商希望经常提供新款式。学术/实践相关性:对于提供频繁变化的产品分类的零售商,我们是第一个考虑需求学习和定价问题的人之一,我们提出并实现了一个用于此设置的先学习后学习算法。我们的算法优先考虑短学习阶段,这是其他算法很少考虑的重要实用特征。方法:我们开发了一种新的需求学习和定价算法,该算法通过将常用的联合分析营销技术应用于我们的设置,在不同种类和有限价格变化的环境中快速学习。我们与Zenrez(一家与健身工作室合作销售健身课程过剩容量的电子商务公司)合作,在控制现场实验中实施我们的算法,使用综合控制方法评估其在实践中的有效性。结果:与对照组相比,我们的算法在学习阶段导致预期的初始收入下降,随后在整个盈利阶段平均每日收入持续显著增长14%-18%,这表明我们的算法贡献可以在实践中产生重大影响。管理意义:需求学习和定价算法的理论好处是很容易理解的——它们允许零售商在面对不确定的季前需求时最佳地匹配供需。然而,大多数现有的需求学习和定价算法需要大量的销售量和对每种产品频繁更改价格的能力。我们的工作为那些没有这种奢侈品的零售商提供了一个强大的需求学习和定价算法,该算法已经在实践中得到了证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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