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A Systematic Approach to Group Fairness in Automated Decision Making

机译:自动决策中分组公平的系统方法

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While the field of algorithmic fairness has brought forth many ways to measure and improve the fairness of machine learning models, these findings are still not widely used in practice. We suspect that one reason for this is that the field of algorithmic fairness came up with a lot of definitions of fairness, which are difficult to navigate. The goal of this paper is to provide data scientists with an accessible introduction to group fairness metrics and to give some insight into the philosophical reasoning for caring about these metrics. We will do this by considering in which sense socio-demographic groups are compared for making a statement on fairness.
机译:虽然算法公平领域带来了许多方法来衡量和改善机器学习模型的公平性,但这些发现仍未在实践中被广泛使用。 我们怀疑这是一个原因是算法公平领域提出了很多对公平的定义,这很难导航。 本文的目标是提供数据科学家,以便对小组公平度量提供无障碍介绍,并欣赏到关心这些指标的哲学推理。 我们将通过考虑在哪种感知社会人口统计群体进行比较,以便就公平作出陈述。

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