Fair Robust Assignment using Redundancy
Matthew Malencia, Vijay Kumar, George Pappas, Amanda Prorok

TL;DR
This paper introduces a fair and robust redundant task assignment method that optimizes worst-case task costs, leveraging supermodularity to achieve near-optimal solutions efficiently, and demonstrates superior performance in simulations.
Contribution
It formulates a novel fair redundant assignment problem, exploits supermodularity for a polynomial-time near-optimal solution, and provides theoretical bounds on solution quality.
Findings
Outperforms benchmark algorithms in simulations.
Scales efficiently to large problem instances.
Achieves improvements in fairness and utility.
Abstract
We study the consideration of fairness in redundant assignment for multi-agent task allocation. It has recently been shown that redundant assignment of agents to tasks provides robustness to uncertainty in task performance. However, the question of how to fairly assign these redundant resources across tasks remains unaddressed. In this paper, we present a novel problem formulation for fair redundant task allocation, which we cast as the optimization of worst-case task costs under a cardinality constraint. Solving this problem optimally is NP-hard. We exploit properties of supermodularity to propose a polynomial-time, near-optimal solution. In supermodular redundant assignment, the use of additional agents always improves task costs. Therefore, we provide a solution set that is times larger than the cardinality constraint. This constraint relaxation enables our approach to…
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