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Fairness Perception from a Network-Centric Perspective

机译:公平从网络以网络为中心的观点感知

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Algorithmic fairness is a major concern in recent years as the influence of machine learning algorithms becomes more widespread. In this paper, we investigate the issue of algorithmic fairness from a network-centric perspective. Specifically, we introduce a novel yet intuitive function known as fairness perception and provide an axiomatic approach to analyze its properties. Using a peer-review network as a case study, we also examine its utility in terms of assessing the perception of fairness in paper acceptance decisions. We show how the function can be extended to a group fairness metric known as fairness visibility and demonstrate its relationship to demographic parity. We also discuss a potential pitfall of the fairness visibility measure that can be exploited to mislead individuals into perceiving that the algorithmic decisions are fair. We demonstrate how the problem can be alleviated by increasing the local neighborhood size of the fairness perception function.
机译:算法公平是近年来作为机器学习算法的影响变得更加普遍的主要问题。在本文中,我们从网络以网络为中心的角度调查了算法公平的问题。具体而言,我们介绍了一种称为公平感知的新颖又直观的功能,并提供了分析其性质的公理方法。使用同行评审网络作为案例研究,我们还以评估纸张接受决策的公平性感知来检查其实用性。我们展示该功能如何扩展到称为公平可见性的组公平度量,并展示其与人口统计奇偶校验的关系。我们还讨论了公平可见度措施的潜在缺陷,可以利用个人误导个人识别算法决策是公平的。我们展示了如何通过增加公平感知功能的本地邻域大小来缓解问题。

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