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ACROCPoLis: A Descriptive Framework for Making Sense of Fairness

Authors :
Tubella, Andrea Aler
Mollo, Dimitri Coelho
Lindström, Adam Dahlgren
Devinney, Hannah
Dignum, Virginia
Ericson, Petter
Jonsson, Anna
Kampik, Timotheus
Lenaerts, Tom
Mendez, Julian Alfredo
Nieves, Juan Carlos
Publication Year :
2023

Abstract

Fairness is central to the ethical and responsible development and use of AI systems, with a large number of frameworks and formal notions of algorithmic fairness being available. However, many of the fairness solutions proposed revolve around technical considerations and not the needs of and consequences for the most impacted communities. We therefore want to take the focus away from definitions and allow for the inclusion of societal and relational aspects to represent how the effects of AI systems impact and are experienced by individuals and social groups. In this paper, we do this by means of proposing the ACROCPoLis framework to represent allocation processes with a modeling emphasis on fairness aspects. The framework provides a shared vocabulary in which the factors relevant to fairness assessments for different situations and procedures are made explicit, as well as their interrelationships. This enables us to compare analogous situations, to highlight the differences in dissimilar situations, and to capture differing interpretations of the same situation by different stakeholders.<br />Comment: To appear in the proceedings of ACM FAccT 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2304.11217
Document Type :
Working Paper