Revenue Maximizing Envy-Free Pricing in Matching Markets with Budgets
Riccardo Colini-Baldeschi, Stefano Leonardi, Qiang Zhang

TL;DR
This paper investigates envy-free pricing in matching markets with budgets, providing approximation algorithms for specific valuation and budget scenarios, and demonstrating that ascending auctions can achieve good revenue despite general hardness results.
Contribution
It introduces approximation algorithms for envy-free revenue maximization under certain budget and valuation conditions, using a novel ascending price auction approach.
Findings
Achieves a 1/4-approximation in two key budget scenarios.
Shows the hardness of approximating the problem in general.
Proposes a novel ascending price auction method.
Abstract
We study envy-free pricing mechanisms in matching markets with items and budget constrained buyers. Each buyer is interested in a subset of the items on sale, and she appraises at some single-value every item in her preference-set. Moreover, each buyer has a budget that constraints the maximum affordable payment, while she aims to obtain as many items as possible of her preference-set. Our goal is to compute an envy-free pricing allocation that maximizes the revenue, i.e., the total payment charged to the buyers. This pricing problem is hard to approximate better than for any , unless . The hardness result is due to the presence of the matching constraints given that the simpler multi-unit case can be approximated up to a constant factor of . The goal of this paper is to circumvent the hardness result by restricting…
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Taxonomy
TopicsAuction Theory and Applications · Game Theory and Voting Systems · Law, Economics, and Judicial Systems
