Dynamic Pricing with Fairness Constraints
研究在动态定价中嵌入价格公平和需求公平两种约束,设计了两种算法在保证公平的同时实现近最优学习效果,并量化了公平性的代价。
Personalized prices can boost revenue, but they increasingly draw fire for hidden discrimination. A new study, “Dynamic Pricing with Fairness Constraints,” by Maxime C. Cohen, Sentao Miao, and Yining Wang, shows that firms can learn demand while staying fair at the same time. The authors embed two complementary notions of fairness into the classic learning-and-earning problem. The first, price fairness, limits price gaps across customer groups and over time, whereas the second, demand fairness, keeps realized demand shares balanced. To enforce price fairness, the authors design FaPU, an infrequently updated upper confidence bound algorithm that respects both group and temporal limits while securing near-optimal regret and matching lower bounds. For demand fairness, they propose FaPD, a primal-dual learner that meets aggregate demand quotas with high probability and the same near-optimal regret rate. Beyond providing tight theoretical analyses, the paper quantifies the “price of fairness” and outlines extensions to non-stationary markets, offering regulators and practitioners evidence that equity and profitability can coexist in algorithmic pricing.