Imputation strategies under clinical presence: Impact on algorithmic fairness

Vincent Jeanselme, Maria De-Arteaga, Zhe Zhang*, Jessica Barrett, Brian Tom

*Autor corresponent d’aquest treball

Producció científica: Article en revista indexadaArticle de conferènciaAvaluat per experts

10 Cites (Scopus)

Resum

Biases have marked medical history, leading to unequal care affecting marginalised groups. The patterns of missingness in observational data often reflect these group discrepancies, but the algorithmic fairness implications of group-specific missingness are not well understood. Despite its potential impact, imputation is too often an overlooked preprocessing step. When explicitly considered, attention is placed on overall performance, ignoring how this preprocessing can reinforce groupspecific inequities. Our work questions this choice by studying how imputation affects downstream algorithmic fairness. First, we provide a structured view of the relationship between clinical presence mechanisms and groupspecific missingness patterns. Then, through simulations and real-world experiments, we demonstrate that the im-putation choice influences marginalised group performance and that no imputation strategy consistently reduces disparities. Importantly, our results show that current practices may endanger health equity as similarly performing imputation strategies at the population level can affect marginalised groups differently. Finally, we propose recommendations for mitigating inequities that may stem from a neglected step of the machine learning pipeline.

Idioma originalAnglès
Pàgines (de-a)12-34
Nombre de pàgines23
RevistaProceedings of Machine Learning Research
Volum193
Estat de la publicacióPublicada - de juny 2022
Publicat externament
Esdeveniment2nd Machine Learning for Health Symposium, ML4H 2022 - Hybrid, New Orleans, United States
Durada: 28 de nov. 202228 de nov. 2022

Fingerprint

Navegar pels temes de recerca de 'Imputation strategies under clinical presence: Impact on algorithmic fairness'. Junts formen un fingerprint únic.

Com citar-ho