Fairness and Machine Fairness

Clinton Castro, David R. O'Brien, Ben Schwan
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引用次数: 1

Abstract

Prediction-based decisions, which are often made by utilizing the tools of machine learning, influence nearly all facets of modern life. Ethical concerns about this widespread practice have given rise to the field of fair machine learning and a number of fairness measures, mathematically precise definitions of fairness that purport to determine whether a given prediction-based decision system is fair. Following Reuben Binns (2017), we take "fairness" in this context to be a placeholder for a variety of normative egalitarian considerations. We explore a few fairness measures to suss out their egalitarian roots and evaluate them, both as formalizations of egalitarian ideas and as assertions of what fairness demands of predictive systems. We pay special attention to a recent and popular fairness measure, counterfactual fairness, which holds that a prediction about an individual is fair if it is the same in the actual world and any counterfactual world where the individual belongs to a different demographic group (cf. Kusner et al. 2018).
公平与机器公平
基于预测的决策通常是通过利用机器学习工具做出的,影响着现代生活的几乎所有方面。对这种广泛实践的伦理关注已经产生了公平机器学习领域和许多公平措施,这些公平的数学精确定义旨在确定给定的基于预测的决策系统是否公平。在鲁宾·宾斯(Reuben Binns)(2017)之后,我们将这种情况下的“公平”视为各种规范平等主义考虑的占位符。我们探索了一些公平措施,以找出它们的平等主义根源,并对它们进行评估,既可以作为平等主义思想的形式化,也可以作为预测系统对公平要求的断言。我们特别关注最近流行的公平措施,即反事实公平,它认为,如果对个人的预测在现实世界和个人属于不同人口群体的任何反事实世界中是相同的,那么它就是公平的(参见Kusner et al. 2018)。
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