Authors
Hadi Hosseini, Zhiyi Huang, Ayumi Igarashi, Nisarg Shah
Publication date
2024/7/9
Journal
Artificial Intelligence
Pages
104177
Publisher
Elsevier
Description
We initiate the study of fairness among classes of agents in online bipartite matching where there is a given set of offline vertices (aka agents) and another set of vertices (aka items) that arrive online and must be matched irrevocably upon arrival. In this setting, agents are partitioned into classes and the matching is required to be fair with respect to the classes. We adapt popular fairness notions (eg envy-freeness, proportionality, and maximin share) and their relaxations to this setting and study deterministic algorithms for matching indivisible items (leading to integral matchings) and for matching divisible items (leading to fractional matchings). For matching indivisible items, we propose an adaptive-priority-based algorithm, Match-and-Shift, prove that it achieves 1 2-approximation of both class envy-freeness up to one item and class maximin share fairness, and show that each guarantee is tight. For matching …
Total citations
Scholar articles
H Hosseini, Z Huang, A Igarashi, N Shah - Artificial Intelligence, 2024