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Bias Mitigation Post-processing for Individual and Group Fairness (1812.06135v1)
Published 14 Dec 2018 in cs.LG, cs.CY, and stat.ML
Abstract: Whereas previous post-processing approaches for increasing the fairness of predictions of biased classifiers address only group fairness, we propose a method for increasing both individual and group fairness. Our novel framework includes an individual bias detector used to prioritize data samples in a bias mitigation algorithm aiming to improve the group fairness measure of disparate impact. We show superior performance to previous work in the combination of classification accuracy, individual fairness and group fairness on several real-world datasets in applications such as credit, employment, and criminal justice.
- Pranay K. Lohia (1 paper)
- Karthikeyan Natesan Ramamurthy (68 papers)
- Manish Bhide (2 papers)
- Diptikalyan Saha (18 papers)
- Kush R. Varshney (121 papers)
- Ruchir Puri (17 papers)