2022
DOI: 10.48550/arxiv.2205.04525
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Towards a multi-stakeholder value-based assessment framework for algorithmic systems

Mireia Yurrita,
Dave Murray-Rust,
Agathe Balayn
et al.

Abstract: In an effort to regulate Machine Learning-driven (ML) systems, current auditing processes mostly focus on detecting harmful algorithmic biases. While these strategies have proven to be impactful, some values outlined in documents dealing with ethics in ML-driven systems are still underrepresented in auditing processes. Such unaddressed values mainly deal with contextual factors that cannot be easily quantified. In this paper, we develop a value-based assessment framework that is not limited to bias auditing an… Show more

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References 89 publications
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