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What is Fair? Defining Fairness in Machine Learning for Health (2406.09307v4)
Published 13 Jun 2024 in cs.LG, cs.CY, and stat.ML
Abstract: Ensuring that ML models are safe, effective, and equitable across all patient groups is essential for clinical decision-making and for preventing the reinforcement of existing health disparities. This review examines notions of fairness used in ML for health, including a review of why ML models can be unfair and how fairness has been quantified in a wide range of real-world examples. We provide an overview of commonly used fairness metrics and supplement our discussion with a case-study of an openly available electronic health record (EHR) dataset. We also discuss the outlook for future research, highlighting current challenges and opportunities in defining fairness in health.
- Jianhui Gao (7 papers)
- Benson Chou (2 papers)
- Zachary R. McCaw (6 papers)
- Hilary Thurston (1 paper)
- Paul Varghese (4 papers)
- Chuan Hong (25 papers)
- Jessica Gronsbell (11 papers)