线上匹配市场中线下代理的公平最大化

IF 1.1 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Will Ma, Pan Xu, Yifan Xu
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引用次数: 8

摘要

在线配对市场(OMMs)在当今世界通常用于配对双方的代理(我们将其称为离线和在线代理),以实现互惠互利。然而,研究表明,在这些omm中做出决策的算法通常会在匹配率上留下差异,特别是对于离线代理。在本文中,我们提出了在线匹配算法,用于优化omm中离线代理之间的个人或群体级别的公平性。我们提出了两种基于线性规划(LP)的采样算法,其竞争比在个体公平最大化时至少达到0.725,在群体公平最大化时至少达到0.719。我们进一步推导了基于公平参数的边界,证明了竞争率可以提高到100%的条件。有两个关键的想法帮助我们打破1-1/𝖾~ 63.2%的在线匹配竞争比率的障碍。一种是增强,它是自适应地将所有采样概率重新分配到每个到达的在线代理的可用邻居中。另一种是衰减,目的是平衡基准LP分配的不同质量的离线agent之间的匹配概率。我们进行了大量的数值实验,结果表明我们的增强版本的采样算法不仅在概念上易于实现,而且在关注公平性的omm实际实例中也非常有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fairness Maximization among Offline Agents in Online-Matching Markets
Online matching markets (OMMs) are commonly used in today’s world to pair agents from two parties (whom we will call offline and online agents) for mutual benefit. However, studies have shown that the algorithms making decisions in these OMMs often leave disparities in matching rates, especially for offline agents. In this article, we propose online matching algorithms that optimize for either individual or group-level fairness among offline agents in OMMs. We present two linear-programming (LP) based sampling algorithms, which achieve competitive ratios at least 0.725 for individual fairness maximization and 0.719 for group fairness maximization. We derive further bounds based on fairness parameters, demonstrating conditions under which the competitive ratio can increase to 100%. There are two key ideas helping us break the barrier of 1-1/𝖾~ 63.2% for competitive ratio in online matching. One is boosting, which is to adaptively re-distribute all sampling probabilities among only the available neighbors for every arriving online agent. The other is attenuation, which aims to balance the matching probabilities among offline agents with different mass allocated by the benchmark LP. We conduct extensive numerical experiments and results show that our boosted version of sampling algorithms are not only conceptually easy to implement but also highly effective in practical instances of OMMs where fairness is a concern.
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来源期刊
ACM Transactions on Economics and Computation
ACM Transactions on Economics and Computation COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
3.80
自引率
0.00%
发文量
11
期刊介绍: The ACM Transactions on Economics and Computation welcomes submissions of the highest quality that concern the intersection of computer science and economics. Of interest to the journal is any topic relevant to both economists and computer scientists, including but not limited to the following: Agents in networks Algorithmic game theory Computation of equilibria Computational social choice Cost of strategic behavior and cost of decentralization ("price of anarchy") Design and analysis of electronic markets Economics of computational advertising Electronic commerce Learning in games and markets Mechanism design Paid search auctions Privacy Recommendation / reputation / trust systems Systems resilient against malicious agents.
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