Price Doubling and Item Halving: Robust Revenue Guarantees for Item Pricing
Elliot Anshelevich, Shreyas Sekar

TL;DR
This paper introduces robust algorithms for item pricing that guarantee good revenue and social welfare approximations, using techniques like Price Doubling and Item Halving, and addresses open questions in valuation classes.
Contribution
It develops new approximation algorithms for revenue maximization with item pricing, including the first polylogarithmic approximation for XoS valuations and a framework unifying existing results.
Findings
Log-approximation for revenue with XoS valuations
Constant-approximation for social welfare
New envy-free pricing mechanisms for multi-unit markets
Abstract
We study approximation algorithms for revenue maximization based on static item pricing, where a seller chooses prices for various goods in the market, and then the buyers purchase utility-maximizing bundles at these given prices. We formulate two somewhat general techniques for designing good pricing algorithms for this setting: Price Doubling and Item Halving. Using these techniques, we unify many of the existing results in the item pricing literature under a common framework, as well as provide several new item pricing algorithms for approximating both revenue and social welfare. More specifically, for a variety of settings with item pricing, we show that it is possible to deterministically obtain a log-approximation for revenue and a constant-approximation for social welfare simultaneously: thus one need not sacrifice revenue if the goal is to still have decent welfare guarantees.…
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Taxonomy
TopicsAuction Theory and Applications · Consumer Market Behavior and Pricing · Economic theories and models
