Mechanism Design via Correlation Gap
Qiqi Yan

TL;DR
This paper explains why simple sequential posted-price mechanisms perform well in revenue and welfare maximization, using the concept of correlation gap to bound their approximation to optimal mechanisms in various auction environments.
Contribution
It introduces a theoretical framework connecting correlation gap to mechanism performance, providing tight analysis and approximation bounds for simple mechanisms in auction settings.
Findings
Sequential posted-price mechanisms achieve constant-factor approximations.
Correlation gap bounds explain the effectiveness of simple mechanisms.
Tight analysis for greedy-based mechanisms in multiple environments.
Abstract
For revenue and welfare maximization in single-dimensional Bayesian settings, Chawla et al. (STOC10) recently showed that sequential posted-price mechanisms (SPMs), though simple in form, can perform surprisingly well compared to the optimal mechanisms. In this paper, we give a theoretical explanation of this fact, based on a connection to the notion of correlation gap. Loosely speaking, for auction environments with matroid constraints, we can relate the performance of a mechanism to the expectation of a monotone submodular function over a random set. This random set corresponds to the winner set for the optimal mechanism, which is highly correlated, and corresponds to certain demand set for SPMs, which is independent. The notion of correlation gap of Agrawal et al.\ (SODA10) quantifies how much we {}"lose" in the expectation of the function by ignoring correlation in the random set,…
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Taxonomy
TopicsAuction Theory and Applications · Consumer Market Behavior and Pricing · Game Theory and Voting Systems
