NeurIPS2022

On Infinite Separations Between Simple and Optimal Mechanisms

Alexandros Psomas, Ariel Schvartzman, S. Matthew Weinberg

被引用 8 次

摘要

We consider a revenue-maximizing seller with kk heterogeneous items for sale to a single additive buyer, whose values are drawn from a known, possibly correlated prior D\mathcal{D}. It is known that there exist priors D\mathcal{D} such that simple mechanisms -- those with bounded menu complexity -- extract an arbitrarily small fraction of the optimal revenue. This paper considers the opposite direction: given a correlated distribution D\mathcal{D} witnessing an infinite separation between simple and optimal mechanisms, what can be said about D\mathcal{D}? Previous work provides a framework for constructing such D\mathcal{D}: it takes as input a sequence of kk-dimensional vectors satisfying some geometric property, and produces a D\mathcal{D} witnessing an infinite gap. Our first main result establishes that this framework is without loss: every D\mathcal{D} witnessing an infinite separation could have resulted from this framework. Even earlier work provided a more streamlined framework. Our second main result establishes that this restrictive framework is not tight. That is, we provide an instance D\mathcal{D} witnessing an infinite gap, but which provably could not have resulted from the restrictive framework. As a corollary, we discover a new kind of mechanism which can witness these infinite separations on instances where the previous ''aligned'' mechanisms do not.