A Unifying Hierarchy of Valuations with Complements and Substitutes
Uriel Feige, Michal Feldman, Nicole Immorlica, Rani Izsak, Brendan, Lucier, Vasilis Syrgkanis

TL;DR
This paper introduces a hierarchical framework called $ ext{MPH}$ for classifying monotone set functions based on their degree of complementarity, enabling better approximation algorithms and insights into valuation functions.
Contribution
The paper defines the $ ext{MPH}$ hierarchy, relates it to existing concepts, and demonstrates its usefulness in approximation and auction analysis.
Findings
$ ext{MPH}$-$k$ captures various classes of valuation functions.
Approximation ratios of $k+1$ for welfare maximization with $ ext{MPH}$-$k$ functions.
Upper bound of $2k$ on the price of anarchy in first-price auctions.
Abstract
We introduce a new hierarchy over monotone set functions, that we refer to as (Maximum over Positive Hypergraphs). Levels of the hierarchy correspond to the degree of complementarity in a given function. The highest level of the hierarchy, - (where is the total number of items) captures all monotone functions. The lowest level, -, captures all monotone submodular functions, and more generally, the class of functions known as . Every monotone function that has a positive hypergraph representation of rank (in the sense defined by Abraham, Babaioff, Dughmi and Roughgarden [EC 2012]) is in -. Every monotone function that has supermodular degree (in the sense defined by Feige and Izsak [ITCS 2013]) is in -. In both cases, the converse direction does not hold, even in an…
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