Uniformly Bounded Regret in Dynamic Fair Allocation
Santiago R. Balseiro, Shangzhou Xia

TL;DR
This paper introduces a new dynamic resource allocation policy that achieves uniformly bounded regret for fairness and efficiency metrics, including the egalitarian welfare, over long time horizons.
Contribution
It proposes the BIRT policy, which re-solves a deterministic surrogate problem logarithmically few times, ensuring bounded regret for fairness-oriented welfare metrics.
Findings
The fluid-based policy attains $O(1)$ regret for smooth welfare metrics.
The BIRT policy achieves $O(1)$ regret for egalitarian welfare, independent of $T$.
Numerical experiments confirm theoretical advantages over benchmark policies.
Abstract
We study a dynamic allocation problem in which sequentially arriving divisible resources are to be allocated to a number of agents with linear utilities. The marginal utilities of each resource to the agents are drawn stochastically from a known joint distribution, independently and identically across time, and the central planner makes immediate and irrevocable allocation decisions. Most works on dynamic resource allocation aim to maximize the utilitarian welfare, i.e., the efficiency of the allocation, which may result in unfair concentration of resources on certain high-utility agents while leaving others' demands under-fulfilled. In this paper, aiming at balancing efficiency and fairness, we instead consider a broad collection of welfare metrics, the H\"older means, which includes the Nash social welfare and the egalitarian welfare. To this end, we first study a fluid-based…
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Taxonomy
TopicsDecision-Making and Behavioral Economics · Economic theories and models · Climate Change Policy and Economics
