English

Strategy-robust Online Learning in Contextual Pricing

Computer Science and Game Theory 2026-02-18 v3

Abstract

Learning effective pricing strategies is crucial in digital marketplaces, especially when buyers' valuations are unknown and must be inferred through interaction. We study the online contextual pricing problem, where a seller observes a stream of context-valuation pairs and dynamically sets prices. Moreover, departing from traditional online learning frameworks, we consider a strategic setting in which buyers may misreport valuations to influence future prices, a challenge known as strategic overfitting (Amin et al. 2013). We introduce a strategy-robust notion of regret for multi-buyer online environments, capturing worst-case strategic behavior in the spirit of the Price of Anarchy. Our first contribution is a polynomial-time approximation scheme (PTAS) for learning linear pricing policies in adversarial, adaptive environments, enabled by a novel online sketching technique. Building on this result, we propose our main construction: the Sparse Update Mechanism (SUM), a simple yet effective sequential mechanism that ensures robustness to all Nash equilibria among buyers. Moreover, our construction yields a black-box reduction from online expert algorithms to strategy-robust learners.

Keywords

Cite

@article{arxiv.2511.19842,
  title  = {Strategy-robust Online Learning in Contextual Pricing},
  author = {Joon Suk Huh and Kirthevasan Kandasamy},
  journal= {arXiv preprint arXiv:2511.19842},
  year   = {2026}
}

Comments

Camera-ready version, to appear in ALT 2026 (32 pages)

R2 v1 2026-07-01T07:53:25.973Z