Price Elasticity Variations across Locations, Time and Customer Segments: An Application to the Self-Storage Industry

S. Mullick, Nicolas Glady, S. Gelper
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引用次数: 1

Abstract

The demand for services such as self-storage varies across locations, over time, as well as across customer segments. Service providers try to leverage these variations and maximize profits by adopting dynamic pricing policies. Implementing dynamic pricing, however, requires accurate estimates of price elasticities at a granular level. Using data from a leading self-storage retailer in Europe, we estimate a Bayesian Dynamic Hierarchical Linear Model (DHLM) to obtain price elasticities across 67 stores, for 21 bi-weeks, and high-valuation vs. low-valuation customer segments. Our estimation procedure accounts for price endogeneity, which is essential when using the estimated price elasticities to set the dynamic pricing policy. We find evidence of different price elasticities between stores and over time, which supports the practice of local dynamic price setting, as well as strong differences between customer segments. Overall, high-valuation customers are more price-sensitive than low-valuation customers. In addition, while the price elasticity of high-valuation customers remains stable, low-valuation customers become less price sensitive over time. This implies that a markup policy should be followed for low-valuation customers, but a more stable pricing regime may suffice for high-valuation customers. Last, we show the benefits of our model compared to a benchmark model with time-invariant price elasticities in determining the pricing policy, and discuss how our model can be applied to other industries that practice revenue management.
不同地点、时间和客户群的价格弹性变化:在自助仓储行业的应用
对自助存储等服务的需求因地点、时间和客户群体而异。服务提供商试图利用这些变化,并通过采用动态定价政策实现利润最大化。然而,实施动态定价需要对价格弹性进行精确的估计。利用欧洲一家领先的自助存储零售商的数据,我们估计了贝叶斯动态层次线性模型(DHLM),以获得67家商店21个双周的价格弹性,以及高估值与低估值的客户群体。我们的估计程序考虑了价格内生性,这在使用估计的价格弹性来设置动态定价政策时是必不可少的。我们发现了不同商店之间和不同时间的价格弹性的证据,这支持了本地动态价格设定的做法,以及不同客户群之间的强烈差异。总体而言,高价值客户比低价值客户对价格更敏感。此外,虽然高价值客户的价格弹性保持稳定,但随着时间的推移,低价值客户的价格敏感性会降低。这意味着对于低价值的客户应该遵循加价政策,但对于高价值的客户,更稳定的定价机制可能就足够了。最后,我们展示了与具有时不变价格弹性的基准模型相比,我们的模型在确定定价政策方面的优势,并讨论了如何将我们的模型应用于其他实施收入管理的行业。
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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