Leveraging Reviews: Learning to Price with Buyer and Seller Uncertainty
Wenshuo Guo, Nika Haghtalab, Kirthevasan Kandasamy, Ellen Vitercik

TL;DR
This paper develops a no-regret pricing algorithm for online marketplaces where sellers set prices without knowing buyer types, leveraging reviews to improve revenue over time, with proven optimal regret bounds.
Contribution
The paper introduces a novel online learning algorithm for pricing in markets with buyer reviews, achieving minimax optimal regret bounds in different regimes.
Findings
Achieves $ ilde O(T^{2/3}d^{1/3})$ regret for $d$ buyer types.
Achieves $ ilde O(T^{1/2}q_{ ext{min}}^{-1/2})$ regret when type probabilities are large.
Proves lower bounds matching the upper bounds, establishing minimax optimality.
Abstract
In online marketplaces, customers have access to hundreds of reviews for a single product. Buyers often use reviews from other customers that share their type -- such as height for clothing, skin type for skincare products, and location for outdoor furniture -- to estimate their values, which they may not know a priori. Customers with few relevant reviews may hesitate to make a purchase except at a low price, so for the seller, there is a tension between setting high prices and ensuring that there are enough reviews so that buyers can confidently estimate their values. Simultaneously, sellers may use reviews to gauge the demand for items they wish to sell. In this work, we study this pricing problem in an online setting where the seller interacts with a set of buyers of finitely many types, one by one, over a series of rounds. At each round, the seller first sets a price. Then a…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Auction Theory and Applications · Optimization and Search Problems
