Beyond accuracy-fairness : stop evaluating bias mitigation methods solely on between-group metrics

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ArXiv, 2024,16 p.
Author(s)

Tell me a story! Narrative-driven XAI with large language models

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ArXiv, 2023,34 p.
Author(s)

Counterfactual explanations for real-world applications

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Antwerpen, University of Antwerp, Faculty of Business and Economics, 2023,xiv, 164 p.
Author(s)

Explainability methods to detect and measure discrimination in machine learning models

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EWAF’23 : European Workshop on Algorithmic Fairness, June 07–09, 2023, Winterthur, Switzerland-3442 () p. 1-5