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Main Authors: Lucas, Mary M., Wang, Xiaoyang, Chang, Chia-Hsuan, Yang, Christopher C., Braughton, Jacqueline E., Ngo, Quyen M.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2404.03833
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author Lucas, Mary M.
Wang, Xiaoyang
Chang, Chia-Hsuan
Yang, Christopher C.
Braughton, Jacqueline E.
Ngo, Quyen M.
author_facet Lucas, Mary M.
Wang, Xiaoyang
Chang, Chia-Hsuan
Yang, Christopher C.
Braughton, Jacqueline E.
Ngo, Quyen M.
contents Fairness of machine learning models in healthcare has drawn increasing attention from clinicians, researchers, and even at the highest level of government. On the other hand, the importance of developing and deploying interpretable or explainable models has been demonstrated, and is essential to increasing the trustworthiness and likelihood of adoption of these models. The objective of this study was to develop and implement a framework for addressing both these issues - fairness and explainability. We propose an explainable fairness framework, first developing a model with optimized performance, and then using an in-processing approach to mitigate model biases relative to the sensitive attributes of race and sex. We then explore and visualize explanations of the model changes that lead to the fairness enhancement process through exploring the changes in importance of features. Our resulting-fairness enhanced models retain high sensitivity with improved fairness and explanations of the fairness-enhancement that may provide helpful insights for healthcare providers to guide clinical decision-making and resource allocation.
format Preprint
id arxiv_https___arxiv_org_abs_2404_03833
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle An ExplainableFair Framework for Prediction of Substance Use Disorder Treatment Completion
Lucas, Mary M.
Wang, Xiaoyang
Chang, Chia-Hsuan
Yang, Christopher C.
Braughton, Jacqueline E.
Ngo, Quyen M.
Machine Learning
Computers and Society
Fairness of machine learning models in healthcare has drawn increasing attention from clinicians, researchers, and even at the highest level of government. On the other hand, the importance of developing and deploying interpretable or explainable models has been demonstrated, and is essential to increasing the trustworthiness and likelihood of adoption of these models. The objective of this study was to develop and implement a framework for addressing both these issues - fairness and explainability. We propose an explainable fairness framework, first developing a model with optimized performance, and then using an in-processing approach to mitigate model biases relative to the sensitive attributes of race and sex. We then explore and visualize explanations of the model changes that lead to the fairness enhancement process through exploring the changes in importance of features. Our resulting-fairness enhanced models retain high sensitivity with improved fairness and explanations of the fairness-enhancement that may provide helpful insights for healthcare providers to guide clinical decision-making and resource allocation.
title An ExplainableFair Framework for Prediction of Substance Use Disorder Treatment Completion
topic Machine Learning
Computers and Society
url https://arxiv.org/abs/2404.03833