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Dettaglio pubblicazione

2020, Proceedings of the Twenty-Ninth International Joint Conference on Artificial Intelligence (IJCAI-20), Pages 24-30

Maximum Nash Welfare and Other Stories About EFX (04b Atto di convegno in volume)

Amanatidis Georgios, Birmpas Georgios, Filos-Ratsikas Aris, Hollender Alexandros, Voudouris Alexandros A.

We consider the classic problem of fairly allocating indivisible goods among agents with additive valuation functions and explore the connection between two prominent fairness notions: maximum Nash welfare (MNW) and envy-freeness up to any good (EFX). We establish that an MNW allocation is always EFX as long as there are at most two possible values for the goods, whereas this implication is no longer true for three or more distinct values. As a notable consequence, this proves the existence of EFX allocations for these restricted valuation functions. While the efficient computation of an MNW allocation for two possible values remains an open problem, we present a novel algorithm for directly constructing EFX allocations in this setting. Finally, we study the question of whether an MNW allocation implies any EFX guarantee for general additive valuation functions under a natural new interpretation of approximate EFX allocations.
ISBN: 978-0-9992411-6-5
Gruppo di ricerca: Algorithms and Data Science
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