Increasingly, scholars seek to integrate legal and technological insights to combat bias in AI systems. In recent years, many different definitions for ensuring non-discrimination in algorithmic decision systems have been put forward. In this paper, we first briefly describe the EU law framework covering cases of algorithmic discrimination. Second, we present an algorithm that harnesses optimal transport to provide a flexible framework to interpolate between different fairness definitions. Third, we show that important normative and legal challenges remain for the implementation of algorithmic fairness interventions in real-world scenarios. Overall, the paper seeks to contribute to the quest for flexible technical frameworks that can be adapted to varying legal and normative fairness constraints.
翻译:学者们越来越多地寻求将法律和技术见解结合起来,以打击AI系统中的偏见。近年来,提出了许多不同的定义,以确保算法决定系统中的不歧视。本文首先简要地描述了涉及算法歧视案例的欧盟法律框架。其次,我们提出了一个利用最佳运输的算法,为不同公平定义之间的相互调和提供一个灵活的框架。第三,我们表明,在现实世界中实施算法公平干预仍面临重要的规范和法律挑战。总体而言,本文件力求促进寻求灵活的技术框架,以适应不同的法律和规范公平限制。