Uncertainty Quantification for Demand Prediction in Contextual Dynamic Pricing

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Abstract

Data-driven sequential decision has found a wide range of applications in modern operations management, such as dynamic pricing, inventory control, and assortment optimization. Most existing research on data-driven sequential decision focuses on designing an online policy to maximize revenue. However, the research on uncertainty quantification on the underlying true model function (e.g., demand function), a critical problem for practitioners, has not been well explored. In this study, using the problem of demand function prediction in dynamic pricing as the motivating example, we study the problem of constructing accurate confidence intervals for the demand function. The main challenge is that sequentially collected data lead to significant distributional bias in the maximum likelihood estimator or the empirical risk minimization estimate, making classical statistical approaches such as the Wald’s test no longer valid. We address this challenge by developing a debiased approach and provide the asymptotic normality guarantee of the debiased estimator. Based this the debiased estimator, we provide both point-wise and uniform confidence intervals of the demand function.

Original languageEnglish
Pages (from-to)1703-1717
Number of pages15
JournalProduction and Operations Management
Volume30
Issue number6
DOIs
StatePublished - Jun 2021

Keywords

  • adaptive data
  • asymptotic normality
  • confidence interval
  • data-driven sequential decision
  • dynamic pricing

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