Bayesian Sequential Auctions
Vasilis Syrgkanis, Eva Tardos

TL;DR
This paper analyzes the efficiency of sequential auctions under Bayesian settings, establishing bounds on the price of anarchy and introducing a bluffing technique to handle complex deviations.
Contribution
It extends previous work by providing the first bounds on the price of anarchy for Bayesian sequential auctions in matching markets and matroid settings.
Findings
Bound of approximately 2.58 on the price of anarchy for matroid auctions and single-value matching markets.
Bound of approximately 3.16 on the price of anarchy for general matching markets with independent types.
Introduction of a bluffing technique to analyze deviations in Bayesian sequential auctions.
Abstract
In many natural settings agents participate in multiple different auctions that are not simultaneous. In such auctions, future opportunities affect strategic considerations of the players. The goal of this paper is to develop a quantitative understanding of outcomes of such sequential auctions. In earlier work (Paes Leme et al. 2012) we initiated the study of the price of anarchy in sequential auctions. We considered sequential first price auctions in the full information model, where players are aware of all future opportunities, as well as the valuation of all players. In this paper, we study efficiency in sequential auctions in the Bayesian environment, relaxing the informational assumption on the players. We focus on two environments, both studied in the full information model in Paes Leme et al. 2012, matching markets and matroid auctions. In the full information environment, a…
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Taxonomy
TopicsAuction Theory and Applications · Consumer Market Behavior and Pricing · Economic theories and models
