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オンラインクラスマッチングにおける公平性と効率性の両立:半近似の壁を超える
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ポイント
- 本研究は、オンラインクラスマッチングにおいて、公平性と効率性を同時に最大化する新しいアルゴリズムを提案した。
- 従来のアルゴリズムでは公平性を確保すると効率性が著しく低下する課題があったが、本研究はそれを克服する。
- 提案手法は、公平性を保ちつつ、従来の限界を上回る効率性を達成し、公平性のトレードオフを初めて定量的に明らかにした。
Abstract
Online bipartite matching, where agents are known in advance but items arrive sequentially and must be irrevocably assigned, is fundamental to problems ranging from ride-sharing to online advertising. When agents belong to classes such as demographic groups or geographic regions, fairness demands equitable treatment across these groups. Recent work introduced class envy-freeness (CEF), a natural extension of the classical fair division notion: an algorithm is $α$-CEF if each class receives value at least an $α$ fraction of what it could extract from any other class's bundle. However, all known algorithms achieving constant-factor CEF guarantees attain utilitarian social welfare (total matching value) of at most $frac{1}{2}$ times the optimum, far below the $1-frac{1}{e} approx 0.632$ achievable without fairness constraints. We resolve the open question of whether fairness necessitates this efficiency loss, by introducing threshold-based algorithms parameterized by $γin [0,1]$ that equalize allocations across classes until threshold $γ$, then maximize efficiency. For divisible matching, this yields simultaneous $(1-e^{-γ})$-CEF and $(1 - frac{e^{γ-1}}{γ+1})$-USW guarantees; for indivisible matching, $fracγ{2}$-CEF with the same USW. Setting $γ> 0$ produces the first algorithms beating $frac{1}{2}$-USW while maintaining constant CEF. We complement this with a novel upper bound construction, proving no non-wasteful $α$-CEF algorithm can exceed $frac{1 +α- e^{α-1}}{1+α}$-USW and correcting prior bounds that were vacuous for $α< 0.58$. Our upper bound nearly matches our algorithms' performance, giving the first substantive characterization of the price of fairness in online class matching.
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