机器学习公平性研究综述

Dana Pessach, E. Shmueli
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引用次数: 163

摘要

越来越多的关于人类日常生活的决策正在被人工智能和机器学习(ML)算法控制,从医疗保健、交通、教育到大学招生、招聘、提供贷款等许多领域。由于它们现在涉及我们生活的许多方面,因此开发不仅准确而且客观公正的ML算法至关重要。最近的研究表明,算法决策可能天生就倾向于不公平,即使没有这种意图。本文概述了在使用ML算法时识别、测量和改进算法公平性的主要概念,主要关注分类任务。本文首先讨论了算法偏差和不公平的原因,以及公平的常见定义和措施。然后对公平性增强机制进行审查,并将其分为进程前机制、进程内机制和进程后机制。然后对这些机制进行全面的比较,以便更好地了解在不同的情况下应该使用哪些机制。文章最后回顾了算法公平性的几个新兴研究子领域,超越了分类。
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A Review on Fairness in Machine Learning
An increasing number of decisions regarding the daily lives of human beings are being controlled by artificial intelligence and machine learning (ML) algorithms in spheres ranging from healthcare, transportation, and education to college admissions, recruitment, provision of loans, and many more realms. Since they now touch on many aspects of our lives, it is crucial to develop ML algorithms that are not only accurate but also objective and fair. Recent studies have shown that algorithmic decision making may be inherently prone to unfairness, even when there is no intention for it. This article presents an overview of the main concepts of identifying, measuring, and improving algorithmic fairness when using ML algorithms, focusing primarily on classification tasks. The article begins by discussing the causes of algorithmic bias and unfairness and the common definitions and measures for fairness. Fairness-enhancing mechanisms are then reviewed and divided into pre-process, in-process, and post-process mechanisms. A comprehensive comparison of the mechanisms is then conducted, toward a better understanding of which mechanisms should be used in different scenarios. The article ends by reviewing several emerging research sub-fields of algorithmic fairness, beyond classification.
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