Bias Mitigation Methods for Binary Classification Decision-Making Systems: Survey and Recommendations

05/31/2023
by   Madeleine Waller, et al.
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Bias mitigation methods for binary classification decision-making systems have been widely researched due to the ever-growing importance of designing fair machine learning processes that are impartial and do not discriminate against individuals or groups based on protected personal characteristics. In this paper, we present a structured overview of the research landscape for bias mitigation methods, report on their benefits and limitations, and provide recommendations for the development of future bias mitigation methods for binary classification.

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