Fairness in AI: challenges in bridging the gap between algorithms and law (2404.19371v1)
Abstract: In this paper we examine algorithmic fairness from the perspective of law aiming to identify best practices and strategies for the specification and adoption of fairness definitions and algorithms in real-world systems and use cases. We start by providing a brief introduction of current anti-discrimination law in the European Union and the United States and discussing the concepts of bias and fairness from an legal and ethical viewpoint. We then proceed by presenting a set of algorithmic fairness definitions by example, aiming to communicate their objectives to non-technical audiences. Then, we introduce a set of core criteria that need to be taken into account when selecting a specific fairness definition for real-world use case applications. Finally, we enumerate a set of key considerations and best practices for the design and employment of fairness methods on real-world AI applications
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- Giorgos Giannopoulos (8 papers)
- Maria Psalla (1 paper)
- Loukas Kavouras (8 papers)
- Dimitris Sacharidis (11 papers)
- Jakub Marecek (101 papers)
- German M Matilla (1 paper)
- Ioannis Emiris (10 papers)