arXiv Open Access 2024

Randomized Truthful Auctions with Learning Agents

Gagan Aggarwal Anupam Gupta Andres Perlroth Grigoris Velegkas
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Abstrak

We study a setting where agents use no-regret learning algorithms to participate in repeated auctions. \citet{kolumbus2022auctions} showed, rather surprisingly, that when bidders participate in second-price auctions using no-regret bidding algorithms, no matter how large the number of interactions $T$ is, the runner-up bidder may not converge to bidding truthfully. Our first result shows that this holds for \emph{general deterministic} truthful auctions. We also show that the ratio of the learning rates of the bidders can \emph{qualitatively} affect the convergence of the bidders. Next, we consider the problem of revenue maximization in this environment. In the setting with fully rational bidders, \citet{myerson1981optimal} showed that revenue can be maximized by using a second-price auction with reserves.We show that, in stark contrast, in our setting with learning bidders, \emph{randomized} auctions can have strictly better revenue guarantees than second-price auctions with reserves, when $T$ is large enough. Finally, we study revenue maximization in the non-asymptotic regime. We define a notion of {\em auctioneer regret} comparing the revenue generated to the revenue of a second price auction with truthful bids. When the auctioneer has to use the same auction throughout the interaction, we show an (almost) tight regret bound of $\smash{\widetilde Θ(T^{3/4})}.$ If the auctioneer can change auctions during the interaction, but in a way that is oblivious to the bids, we show an (almost) tight bound of $\smash{\widetilde Θ(\sqrt{T})}.$

Topik & Kata Kunci

Penulis (4)

G

Gagan Aggarwal

A

Anupam Gupta

A

Andres Perlroth

G

Grigoris Velegkas

Format Sitasi

Aggarwal, G., Gupta, A., Perlroth, A., Velegkas, G. (2024). Randomized Truthful Auctions with Learning Agents. https://arxiv.org/abs/2411.09517

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2024
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en
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arXiv
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