2024
DOI: 10.1177/10591478241234998
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Goal Orientation for Fair Machine Learning Algorithms

Heng Xu,
Nan Zhang

Abstract: A key challenge facing the use of Machine Learning (ML) in organizational selection settings (e.g., the pro­cessing of loan or job applications) is the potential bias against (racial and gender) minorities. To address this challenge, a rich literature of Fairness-Aware ML (FAML) algorithms has emerged, attempting to ameliorate biases while main­taining the predictive accuracy of ML algorithms. Almost all existing FAML algorithms define their optimization goals according to a selection task, meaning that ML out… Show more

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