Weighted Envy-Freeness in Indivisible Item Allocation
This addresses fairness in resource allocation for scenarios with unequal agent weights, such as in multi-agent systems or economic settings, representing a domain-specific incremental advance.
The paper tackles the problem of fairly allocating indivisible items among agents with different entitlements by introducing weighted envy-freeness concepts, showing that Pareto optimal and strongly weighted envy-free allocations always exist for additive valuations and can be computed efficiently.
We introduce and analyze new envy-based fairness concepts for agents with weights that quantify their entitlements in the allocation of indivisible items. We propose two variants of weighted envy-freeness up to one item (WEF1): strong, where envy can be eliminated by removing an item from the envied agent's bundle, and weak, where envy can be eliminated either by removing an item (as in the strong version) or by replicating an item from the envied agent's bundle in the envying agent's bundle. We show that for additive valuations, an allocation that is both Pareto optimal and strongly WEF1 always exists and can be computed in pseudo-polynomial time; moreover, an allocation that maximizes the weighted Nash social welfare may not be strongly WEF1, but always satisfies the weak version of the property. Moreover, we establish that a generalization of the round-robin picking sequence algorithm produces in polynomial time a strongly WEF1 allocation for an arbitrary number of agents; for two agents, we can efficiently achieve both strong WEF1 and Pareto optimality by adapting the adjusted winner procedure. Our work highlights several aspects in which weighted fair division is richer and more challenging than its unweighted counterpart.