Anonymous Pricing in Large Markets
Computer Science and Game Theory
2026-01-26 v1 Theoretical Economics
Abstract
We study revenue maximization when a seller offers identical units to ex ante heterogeneous, unit-demand buyers. While anonymous pricing can be worse than optimal in general multi-unit environments, we show that this pessimism disappears in large markets, where no single buyer accounts for a non-negligible share of optimal revenue. Under (quasi-)regularity, anonymous pricing achieves a approximation to the optimal mechanism; the worst-case ratio is maximized at about when and converges to as grows. This indicates that the gains from third-degree price discrimination are mild in large markets.
Cite
@article{arxiv.2601.16488,
title = {Anonymous Pricing in Large Markets},
author = {Yaonan Jin and Yingkai Li},
journal= {arXiv preprint arXiv:2601.16488},
year = {2026}
}