Bias and unfairness in Machine Learning (ML) are challenging to detect and mitigate, particularly in critical fields such as finance, hiring, and healthcare. While numerous unfairness mitigation techniques exist, most evaluation frameworks assess only a limited set of fairness metrics, primarily focusing on the trade-off between fairness and accuracy. We introduce FAIR-CARE, a new open-source and robust approach that consists of an evaluation pipeline designed for the systematic assessment of unfairness mitigation techniques. Our approach simultaneously evaluates multiple fairness and performance metrics across various ML models. We conduct a comparative analysis on healthcare datasets with diverse distributions—including target class, protected attribute, and their joint distributions—to identify the most effective mitigation technique for each processing type (pre-, in-, and post-processing). Furthermore, we determine the best-performing techniques across different datasets, fairness metrics, performance metrics, and ML models. Finally, we provide practical insights into the application of these techniques, offering actionable guidance for both researchers and practitioners.

FAIR-CARE: A comparative evaluation of unfairness mitigation approaches

Criscuolo, Chiara;Salnitri, Mattia;Martinenghi, Davide
2026-01-01

Abstract

Bias and unfairness in Machine Learning (ML) are challenging to detect and mitigate, particularly in critical fields such as finance, hiring, and healthcare. While numerous unfairness mitigation techniques exist, most evaluation frameworks assess only a limited set of fairness metrics, primarily focusing on the trade-off between fairness and accuracy. We introduce FAIR-CARE, a new open-source and robust approach that consists of an evaluation pipeline designed for the systematic assessment of unfairness mitigation techniques. Our approach simultaneously evaluates multiple fairness and performance metrics across various ML models. We conduct a comparative analysis on healthcare datasets with diverse distributions—including target class, protected attribute, and their joint distributions—to identify the most effective mitigation technique for each processing type (pre-, in-, and post-processing). Furthermore, we determine the best-performing techniques across different datasets, fairness metrics, performance metrics, and ML models. Finally, we provide practical insights into the application of these techniques, offering actionable guidance for both researchers and practitioners.
2026
Binary classification
Data bias
Fairness
Machine learning
Mitigation
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11311/1316026
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