English

Distribution-free Contextual Dynamic Pricing

Machine Learning 2023-03-07 v2 Machine Learning Statistics Theory Statistics Theory

Abstract

Contextual dynamic pricing aims to set personalized prices based on sequential interactions with customers. At each time period, a customer who is interested in purchasing a product comes to the platform. The customer's valuation for the product is a linear function of contexts, including product and customer features, plus some random market noise. The seller does not observe the customer's true valuation, but instead needs to learn the valuation by leveraging contextual information and historical binary purchase feedbacks. Existing models typically assume full or partial knowledge of the random noise distribution. In this paper, we consider contextual dynamic pricing with unknown random noise in the valuation model. Our distribution-free pricing policy learns both the contextual function and the market noise simultaneously. A key ingredient of our method is a novel perturbed linear bandit framework, where a modified linear upper confidence bound algorithm is proposed to balance the exploration of market noise and the exploitation of the current knowledge for better pricing. We establish the regret upper bound and a matching lower bound of our policy in the perturbed linear bandit framework and prove a sub-linear regret bound in the considered pricing problem. Finally, we demonstrate the superior performance of our policy on simulations and a real-life auto-loan dataset.

Keywords

Cite

@article{arxiv.2109.07340,
  title  = {Distribution-free Contextual Dynamic Pricing},
  author = {Yiyun Luo and Will Wei Sun and and Yufeng Liu},
  journal= {arXiv preprint arXiv:2109.07340},
  year   = {2023}
}

Comments

Accepted by Mathematics of Operations Research

R2 v1 2026-06-24T05:59:27.373Z