Optimal Pricing with a Single Point
Amine Allouah (),
Achraf Bahamou () and
Omar Besbes ()
Additional contact information
Amine Allouah: Independent Researcher
Achraf Bahamou: Department of Industrial Engineering and Operations Research, Columbia University, New York, New York 10027
Omar Besbes: Decision, Risk & Operations Division, Graduate School of Business, Columbia University, New York, New York 10027
Management Science, 2023, vol. 69, issue 10, 5866-5882
Abstract:
Historical data are typically limited. We study the following fundamental data-driven pricing problem. How can/should a decision maker price its product based on data at a single historical price? How valuable is such data? We consider a decision maker who optimizes over (potentially randomized) pricing policies to maximize the worst-case ratio of the garnered revenue compared to an oracle with full knowledge of the distribution of values, when the latter is only assumed to belong to a broad nonparametric set. In particular, our framework applies to the widely used regular and monotone nondecreasing hazard rate (mhr) classes of distributions. For settings where the seller knows the exact probability of sale associated with one historical price or only a confidence interval for it, we fully characterize optimal performance and near-optimal pricing algorithms that adjust to the information at hand. The framework we develop is general and allows to characterize optimal performance for deterministic or more general randomized mechanisms and leads to fundamental novel insights on the value of data for pricing. As examples, against mhr distributions, we show that it is possible to guarantee 85% of oracle performance if one knows that half of the customers have bought at the historical price, and if only 1% of the customers bought, it still possible to guarantee 51% of oracle performance.
Keywords: pricing; data-driven algorithms; robust pricing; value of data; distributionally robust optimization; conversion rate; limited information; randomized algorithms (search for similar items in EconPapers)
Date: 2023
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Persistent link: https://EconPapers.repec.org/RePEc:inm:ormnsc:v:69:y:2023:i:10:p:5866-5882
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