Cargando…

A Joint Fairness Model with Applications to Risk Predictions for Under-represented Populations

In data collection for predictive modeling, under-representation of certain groups, based on gender, race/ethnicity, or age, may yield less-accurate predictions for these groups. Recently, this issue of fairness in predictions has attracted significant attention, as data-driven models are increasing...

Descripción completa

Detalles Bibliográficos
Autores principales: Do, Hyungrok, Nandi, Shinjini, Putzel, Preston, Smyth, Padhraic, Zhong, Judy
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cornell University 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8132236/
https://www.ncbi.nlm.nih.gov/pubmed/34012993
_version_ 1783694876227928064
author Do, Hyungrok
Nandi, Shinjini
Putzel, Preston
Smyth, Padhraic
Zhong, Judy
author_facet Do, Hyungrok
Nandi, Shinjini
Putzel, Preston
Smyth, Padhraic
Zhong, Judy
author_sort Do, Hyungrok
collection PubMed
description In data collection for predictive modeling, under-representation of certain groups, based on gender, race/ethnicity, or age, may yield less-accurate predictions for these groups. Recently, this issue of fairness in predictions has attracted significant attention, as data-driven models are increasingly utilized to perform crucial decision-making tasks. Existing methods to achieve fairness in the machine learning literature typically build a single prediction model in a manner that encourages fair prediction performance for all groups. These approaches have two major limitations: i) fairness is often achieved by compromising accuracy for some groups; ii) the underlying relationship between dependent and independent variables may not be the same across groups. We propose a Joint Fairness Model (JFM) approach for logistic regression models for binary outcomes that estimates group-specific classifiers using a joint modeling objective function that incorporates fairness criteria for prediction. We introduce an Accelerated Smoothing Proximal Gradient Algorithm to solve the convex objective function, and present the key asymptotic properties of the JFM estimates. Through simulations, we demonstrate the efficacy of the JFM in achieving good prediction performance and across-group parity, in comparison with the single fairness model, group-separate model, and group-ignorant model, especially when the minority group’s sample size is small. Finally, we demonstrate the utility of the JFM method in a real-world example to obtain fair risk predictions for under-represented older patients diagnosed with coronavirus disease 2019 (COVID-19).
format Online
Article
Text
id pubmed-8132236
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Cornell University
record_format MEDLINE/PubMed
spelling pubmed-81322362021-05-20 A Joint Fairness Model with Applications to Risk Predictions for Under-represented Populations Do, Hyungrok Nandi, Shinjini Putzel, Preston Smyth, Padhraic Zhong, Judy ArXiv Article In data collection for predictive modeling, under-representation of certain groups, based on gender, race/ethnicity, or age, may yield less-accurate predictions for these groups. Recently, this issue of fairness in predictions has attracted significant attention, as data-driven models are increasingly utilized to perform crucial decision-making tasks. Existing methods to achieve fairness in the machine learning literature typically build a single prediction model in a manner that encourages fair prediction performance for all groups. These approaches have two major limitations: i) fairness is often achieved by compromising accuracy for some groups; ii) the underlying relationship between dependent and independent variables may not be the same across groups. We propose a Joint Fairness Model (JFM) approach for logistic regression models for binary outcomes that estimates group-specific classifiers using a joint modeling objective function that incorporates fairness criteria for prediction. We introduce an Accelerated Smoothing Proximal Gradient Algorithm to solve the convex objective function, and present the key asymptotic properties of the JFM estimates. Through simulations, we demonstrate the efficacy of the JFM in achieving good prediction performance and across-group parity, in comparison with the single fairness model, group-separate model, and group-ignorant model, especially when the minority group’s sample size is small. Finally, we demonstrate the utility of the JFM method in a real-world example to obtain fair risk predictions for under-represented older patients diagnosed with coronavirus disease 2019 (COVID-19). Cornell University 2021-05-10 /pmc/articles/PMC8132236/ /pubmed/34012993 Text en https://creativecommons.org/licenses/by/4.0/This work is licensed under a Creative Commons Attribution 4.0 International License (https://creativecommons.org/licenses/by/4.0/) , which allows reusers to distribute, remix, adapt, and build upon the material in any medium or format, so long as attribution is given to the creator. The license allows for commercial use.
spellingShingle Article
Do, Hyungrok
Nandi, Shinjini
Putzel, Preston
Smyth, Padhraic
Zhong, Judy
A Joint Fairness Model with Applications to Risk Predictions for Under-represented Populations
title A Joint Fairness Model with Applications to Risk Predictions for Under-represented Populations
title_full A Joint Fairness Model with Applications to Risk Predictions for Under-represented Populations
title_fullStr A Joint Fairness Model with Applications to Risk Predictions for Under-represented Populations
title_full_unstemmed A Joint Fairness Model with Applications to Risk Predictions for Under-represented Populations
title_short A Joint Fairness Model with Applications to Risk Predictions for Under-represented Populations
title_sort joint fairness model with applications to risk predictions for under-represented populations
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8132236/
https://www.ncbi.nlm.nih.gov/pubmed/34012993
work_keys_str_mv AT dohyungrok ajointfairnessmodelwithapplicationstoriskpredictionsforunderrepresentedpopulations
AT nandishinjini ajointfairnessmodelwithapplicationstoriskpredictionsforunderrepresentedpopulations
AT putzelpreston ajointfairnessmodelwithapplicationstoriskpredictionsforunderrepresentedpopulations
AT smythpadhraic ajointfairnessmodelwithapplicationstoriskpredictionsforunderrepresentedpopulations
AT zhongjudy ajointfairnessmodelwithapplicationstoriskpredictionsforunderrepresentedpopulations
AT dohyungrok jointfairnessmodelwithapplicationstoriskpredictionsforunderrepresentedpopulations
AT nandishinjini jointfairnessmodelwithapplicationstoriskpredictionsforunderrepresentedpopulations
AT putzelpreston jointfairnessmodelwithapplicationstoriskpredictionsforunderrepresentedpopulations
AT smythpadhraic jointfairnessmodelwithapplicationstoriskpredictionsforunderrepresentedpopulations
AT zhongjudy jointfairnessmodelwithapplicationstoriskpredictionsforunderrepresentedpopulations