Document Type
Article
Publication Date
4-2022
Keywords
causal modeling; fair machine learning; philosophy; sociology; law
Abstract
Over the past several years, multiple different methods to measure the causal fairness of machine learning models have been proposed. However, despite the growing number of publications and implementations, there is still a critical lack of literature that explains the interplay of causality-based fairness notions with the social sciences of philosophy, sociology, and law. We hope to remedy this issue by accumulating and expounding upon the thoughts and discussions of causality-based fairness notions produced by both social and formal (specifically machine learning) sciences in this field guide. In addition to giving the mathematical backgrounds of several popular causality-based fair machine learning notions, we explain their connection to and interplay with the fields of philosophy and law. Further, we explore several criticisms of the current approaches to causality-based fair machine learning from a sociological viewpoint as well as from a technical standpoint. It is our hope that this field guide will help fair machine learning practitioners better understand how their causality-based fairness notions align with important humanistic values (such as fairness) and how we can, as a field, design methods and metrics to better serve oppressed and marginalized populaces.
Citation
Carey, A., & Wu, X. (2022). The Causal Fairness Field Guide: Perspectives From Social and Formal Sciences. Frontiers in Big Data, 5, 892837. https://doi.org/10.3389/fdata.2022.892837
Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 International License.