Truthful Learning Mechanisms for Multi-Slot Sponsored Search Auctions with Externalities
Nicola Gatti, Alessandro Lazaric, Marco Rocco, Francesco Trov\`o

TL;DR
This paper extends truthful learning mechanisms to multi-slot sponsored search auctions with externalities, using the cascade model to estimate CTRs while minimizing revenue loss and social welfare regret.
Contribution
It introduces novel bounds and algorithms for multi-slot auctions with externalities, expanding prior single-slot results to more complex auction settings.
Findings
Established upper and lower bounds on revenue loss and social welfare regret.
Demonstrated the effectiveness of the proposed mechanisms through numerical simulations.
Abstract
Sponsored search auctions constitute one of the most successful applications of microeconomic mechanisms. In mechanism design, auctions are usually designed to incentivize advertisers to bid their truthful valuations and to assure both the advertisers and the auctioneer a non-negative utility. Nonetheless, in sponsored search auctions, the click-through-rates (CTRs) of the advertisers are often unknown to the auctioneer and thus standard truthful mechanisms cannot be directly applied and must be paired with an effective learning algorithm for the estimation of the CTRs. This introduces the critical problem of designing a learning mechanism able to estimate the CTRs at the same time as implementing a truthful mechanism with a revenue loss as small as possible compared to an optimal mechanism designed with the true CTRs. Previous work showed that, when dominant-strategy truthfulness is…
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