Offline Feature-Based Pricing Under Censored Demand: A Causal Inference Approach

Jingwen Tang, Zhengling Qi, Ethan Fang, Cong Shi

Research output: Contribution to journalArticlepeer-review

Abstract

Problem definition: We study a feature-based pricing problem with demand censoring in an offline, data-driven setting. In this problem, a firm is endowed with a finite amount of inventory and faces a random demand that is dependent on the offered price and the features (from products, customers, or both). Any unsatisfied demand that exceeds the inventory level is lost and unobservable. The firm does not know the demand function but has access to an offline data set consisting of quadruplets of historical features, inventory, price, and potentially censored sales quantity. Our objective is to use the offline data set to find the optimal feature-based pricing rule so as to maximize the expected profit. Methodology/results: Through the lens of causal inference, we propose a novel data-driven algorithm that is motivated by survival analysis and doubly robust estimation. We derive a finite sample regret bound to justify the proposed offline learning algorithm and prove its robustness. Numerical experiments demonstrate the robust performance of our proposed algorithm in accurately estimating optimal prices on both training and testing data. Managerial implications: The work provides practitioners with an innovative modeling and algorithmic framework for the feature-based pricing problem with demand censoring through the lens of causal inference. Our numerical experiments underscore the value of considering demand censoring in the context of feature-based pricing.

Original languageEnglish (US)
Pages (from-to)535-553
Number of pages19
JournalManufacturing and Service Operations Management
Volume27
Issue number2
DOIs
StatePublished - Mar 2025

All Science Journal Classification (ASJC) codes

  • Strategy and Management
  • Management Science and Operations Research

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