Improving EFX Guarantees through Rainbow Cycle Number
Bhaskar Ray Chaudhury, Jugal Garg, Kurt Mehlhorn, Ruta Mehta,, Pranabendu Misra

TL;DR
This paper introduces a novel graph-theoretic approach to improve fairness guarantees in indivisible goods allocation, achieving near-complete EFX fairness with few unallocated goods and providing a polynomial-time algorithm.
Contribution
It develops a new extremal graph theory framework using rainbow cycle number to systematically reduce unallocated goods in EFX allocations.
Findings
Established a polynomial upper bound on rainbow cycle number R(d).
Proved existence of (1-ε)-EFX allocations with sublinear unallocated goods.
Provided a polynomial-time algorithm for constructing such allocations.
Abstract
We study the problem of fairly allocating a set of indivisible goods among agents with additive valuations. Envy-freeness up to any good (EFX) is arguably the most compelling fairness notion in this context. However, the existence of EFX allocations has not been settled and is one of the most important problems in fair division. Towards resolving this problem, many impressive results show the existence of its relaxations, e.g., the existence of -EFX allocations, and the existence of EFX at most unallocated goods. The latter result was recently improved for three agents, in which the two unallocated goods are allocated through an involved procedure. Reducing the number of unallocated goods for arbitrary number of agents is a systematic way to settle the big question. In this paper, we develop a new approach, and show that for every , there always…
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