Privacy-Preserving Personalized Revenue Management

Autor: Yanzhe Lei, Ruslan Momot, Sentao Miao
Přispěvatelé: Ecole des Hautes Etudes Commerciales (HEC Paris), HEC Research Paper Series, Haldemann, Antoine
Jazyk: angličtina
Rok vydání: 2020
Předmět:
History
Polymers and Plastics
Operations research
Computer science
revenue management
JEL: M - Business Administration and Business Economics • Marketing • Accounting • Personnel Economics/M.M2 - Business Economics/M.M2.M20 - General
Industry standard
0211 other engineering and technologies
02 engineering and technology
privacy
Industrial and Manufacturing Engineering
JEL: M - Business Administration and Business Economics • Marketing • Accounting • Personnel Economics/M.M3 - Marketing and Advertising/M.M3.M31 - Marketing
personalized pricing
Order (exchange)
0502 economics and business
Revenue
Differential privacy
050207 economics
Business and International Management
Set (psychology)
JEL: C - Mathematical and Quantitative Methods/C.C0 - General/C.C0.C02 - Mathematical Methods
021103 operations research
Revenue management
JEL: L - Industrial Organization/L.L5 - Regulation and Industrial Policy/L.L5.L51 - Economics of Regulation
05 social sciences
JEL: C - Mathematical and Quantitative Methods/C.C1 - Econometric and Statistical Methods and Methodology: General/C.C1.C13 - Estimation: General
JEL: M - Business Administration and Business Economics • Marketing • Accounting • Personnel Economics/M.M3 - Marketing and Advertising/M.M3.M37 - Advertising
JEL: C - Mathematical and Quantitative Methods/C.C4 - Econometric and Statistical Methods: Special Topics/C.C4.C44 - Operations Research • Statistical Decision Theory
JEL: A - General Economics and Teaching/A.A1 - General Economics/A.A1.A10 - General
Privacy preserving
data-driven decision making
JEL: D - Microeconomics/D.D2 - Production and Organizations/D.D2.D21 - Firm Behavior: Theory
JEL: D - Microeconomics/D.D1 - Household Behavior and Family Economics/D.D1.D18 - Consumer Protection
Consumer privacy
JEL: A - General Economics and Teaching/A.A1 - General Economics/A.A1.A12 - Relation of Economics to Other Disciplines
[SHS.GESTION]Humanities and Social Sciences/Business administration
JEL: C - Mathematical and Quantitative Methods/C.C1 - Econometric and Statistical Methods and Methodology: General/C.C1.C18 - Methodological Issues: General
[SHS.GESTION] Humanities and Social Sciences/Business administration
JEL: M - Business Administration and Business Economics • Marketing • Accounting • Personnel Economics/M.M1 - Business Administration/M.M1.M15 - IT Management
JEL: D - Microeconomics/D.D1 - Household Behavior and Family Economics/D.D1.D11 - Consumer Economics: Theory
Popis: This paper examines how data-driven personalized decisions can be made while preserving consumer privacy. Our setting is one in which the firm chooses a personalized price based on each new customer's vector of individual features; the true set of individual demand-generating parameters is unknown to the firm and so must be estimated from historical data. We extend this classical framework of personalized pricing by requiring also that the firm's pricing policy preserve consumer privacy, or (formally) that it be differentially private -- an industry standard for privacy preservation. The two settings we consider are theoretically and practically relevant: central and local models of differential privacy, which differ in the strength of the privacy guarantees they provide. For both models, we develop privacy-preserving personalized pricing algorithms and derive the theoretical bounds on their performance as measured by the firm's revenue. Our analyses suggest that, if the firm possesses a sufficient amount of historical data, then it can achieve central differential privacy at a cost of the same order as the "classical" loss in revenue due to estimation error. Comparing the two models, we conclude that local differentially private personalized pricing yields better privacy guarantees but leads to much greater revenue loss by the firm. We confirm our theoretical findings in a series of numerical experiments based on synthetically generated and real-world On-line Auto Lending (CPRM-12-001) data sets. Finally, we also apply our theoretical framework to the setting of personalized assortment optimization.
Databáze: OpenAIRE