Robust Auction Design with Support Information
Jerry Anunrojwong, Santiago R. Balseiro, Omar Besbes

TL;DR
This paper develops robust auction mechanisms that maximize worst-case revenue with limited support information about buyer valuations, introducing pooling auctions and analyzing their optimality across different information regimes.
Contribution
It introduces a new class of pooling auctions (POOL) and characterizes their optimality in robust auction design under support uncertainty.
Findings
Optimal mechanisms depend on the ratio of support bounds a/b.
Pooling auctions outperform second-price auctions when a/b exceeds a threshold.
Deviating from standard mechanisms is necessary for robustness.
Abstract
A seller wants to sell an item to buyers. Buyer valuations are drawn i.i.d. from a distribution unknown to the seller; the seller only knows that the support is included in . To be robust, the seller chooses a DSIC mechanism that optimizes the worst-case performance relative to the ideal expected revenue the seller could have collected with knowledge of buyers' valuations. Our analysis unifies the regret and the ratio objectives. For these objectives, we derive an optimal mechanism and the corresponding performance in quasi-closed form, as a function of the support information and the number of buyers . Our analysis reveals three regimes of support information and a new class of robust mechanisms. i.) When is below a threshold, the optimal mechanism is a second-price auction (SPA) with random reserve, a focal class in earlier literature. ii.) When …
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Taxonomy
TopicsAuction Theory and Applications · Consumer Market Behavior and Pricing · Experimental Behavioral Economics Studies
