Resource Allocation under the Latin Square Constraint
Yasushi Kawase, Bodhayan Roy, Mohammad Azharuddin Sanpui

TL;DR
This paper studies resource allocation under Latin square constraints, proving NP-hardness for maximizing social welfare and providing approximation algorithms and fixed-parameter tractability results for the problem.
Contribution
It introduces a novel allocation problem with Latin square constraints, establishes its computational hardness, and offers approximation and FPT algorithms.
Findings
NP-hardness of maximizing utilitarian social welfare with binary valuations
Approximation algorithms with ratios (1-1/e) and (1-1/e)/4 for partial and complete allocations
NP-hardness of deciding egalitarian welfare thresholds and checking fairness properties
Abstract
A Latin square is an matrix filled with distinct symbols, each of which appears exactly once in each row and exactly once in each column. We introduce a problem of allocating indivisible items among agents over rounds while satisfying the Latin square constraint. This constraint ensures that each agent receives no more than one item per round and receives each item at most once. Each agent has an additive valuation on the item--round pairs. Real-world applications like scheduling, resource management, and experimental design require the Latin square constraint to satisfy fairness or balancedness in allocation. Our goal is to find a partial or complete allocation that maximizes the sum of the agents' valuations (utilitarian social welfare) or the minimum of the agents' valuations (egalitarian social welfare). For the problem of maximizing utilitarian social…
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