TY - JOUR T1 - Fairness Measures for Machine Learning in Finance JF - The Journal of Financial Data Science DO - 10.3905/jfds.2021.1.075 SP - jfds.2021.1.075 AU - Sanjiv Das AU - Michele Donini AU - Jason Gelman AU - Kevin Haas AU - Mila Hardt AU - Jared Katzman AU - Krishnaram Kenthapadi AU - Pedro Larroy AU - Pinar Yilmaz AU - Muhammad Bilal Zafar Y1 - 2021/09/14 UR - https://pm-research.com/content/early/2021/09/14/jfds.2021.1.075.abstract N2 - The authors present a machine learning pipeline for fairness-aware machine learning (FAML) in finance that encompasses metrics for fairness (and accuracy). Whereas accuracy metrics are well understood and the principal ones are used frequently, there is no consensus as to which of several available measures for fairness should be used in a generic manner in the financial services industry. The authors explore these measures and discuss which ones to focus on at various stages in the ML pipeline, pre-training and post-training, and they examine simple bias mitigation approaches. Using a standard dataset, they show that the sequencing in their FAML pipeline offers a cogent approach to arriving at a fair and accurate ML model. The authors discuss the intersection of bias metrics with legal considerations in the United States, and the entanglement of explainability and fairness is exemplified in the case study. They discuss possible approaches for training ML models while satisfying constraints imposed from various fairness metrics and the role of causality in assessing fairness.TOPICS: Big data/machine learning, legal/regulatory/public policy, performance measurementKey Findings▪ Sources of bias are presented and a range of metrics is considered for machine learning applications in finance, both pre-training and post-training of models.▪ A process of using the metrics to arrive at fair models is discussed.▪ Various considerations for the choice of specific metrics are also analyzed. ER -