GTMay 11

Fair Allocation under Conflict Constraints

arXiv:2605.099309.4
Predicted impact top 76% in GT · last 90 daysOriginality Incremental advance
AI Analysis

This work addresses the problem of combining fairness (EF1) and efficiency (maximality) in allocation with conflict constraints, providing both positive existence results for two agents and hardness results for more agents.

The paper studies fair allocation of indivisible items under conflict constraints, proving that for two agents with monotone valuations, a maximal EF1 allocation always exists and can be computed in pseudopolynomial time, while for general agents, existence fails even for three agents with identical monotone valuations and is NP-hard to decide.

We study the fair allocation of indivisible items subject to conflict constraints. In this framework, the items are represented as the vertices of a graph, with edges corresponding to conflicts between pairs of items. Each agent is assigned an independent set of items from the graph. Our goal is to achieve a fair and efficient allocation of these items. Fairness pertains to satisfying envy-freeness up to one item (EF1), while efficiency is defined by maximality, meaning that no unallocated item can be feasibly assigned to any agent. First, we explore the case of two agents. For monotone valuations, we show that a maximal EF1 allocation always exists on any graph. Our existence proof relies on a color-switching technique, which locally modifies a maximal allocation while preserving feasibility and restoring EF1. We further show that such allocations can be computed in pseudopolynomial time in general, and in polynomial time for additive valuations on arbitrary graphs, as well as for monotone valuations on interval and bipartite graphs. By contrast, once monotonicity is dropped, maximal EF1 allocations need not exist even for identical additive valuations, and deciding existence becomes NP-hard. Next, we consider the case with a general number of agents. Again, we arrive at a negative result: An EF1 and maximal allocation fails to exist even for three agents under identical monotone valuations, and determining the existence of such an allocation is NP-hard. On the positive side, we show that under identical non-monotone additive valuations on a path graph, an EF[1,1] and maximal allocation always exists. This result involves a novel application of the "cycle plus triangles" theorem.

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