Selling Joint Ads: A Regret Minimization Perspective
Gagan Aggarwal, Ashwinkumar Badanidiyuru, Paul D\"utting, Federico Fusco

TL;DR
This paper studies the problem of selling an ad slot to two buyers with complex incentives, proposing online learning algorithms with regret bounds in stochastic and adversarial settings, and establishing fundamental limits.
Contribution
It introduces adaptive discretization for mechanism learning and provides regret bounds, addressing technical challenges in incentive-compatible mechanism design.
Findings
Efficient algorithm with $O(T^{3/4})$ regret in stochastic setting.
Constructs an $O(T^{2/3})$ regret algorithm for $\sigma$-smooth adversaries.
Proves a lower bound of $\Omega(\sqrt T)$ regret for both settings.
Abstract
Motivated by online retail, we consider the problem of selling one item (e.g., an ad slot) to two non-excludable buyers (say, a merchant and a brand). This problem captures, for example, situations where a merchant and a brand cooperatively bid in an auction to advertise a product, and both benefit from the ad being shown. A mechanism collects bids from the two and decides whether to allocate and which payments the two parties should make. This gives rise to intricate incentive compatibility constraints, e.g., on how to split payments between the two parties. We approach the problem of finding a revenue-maximizing incentive-compatible mechanism from an online learning perspective; this poses significant technical challenges. First, the action space (the class of all possible mechanisms) is huge; second, the function that maps mechanisms to revenue is highly irregular, ruling out…
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Taxonomy
TopicsConsumer Market Behavior and Pricing · Digital Platforms and Economics · Merger and Competition Analysis
