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Hauptverfasser: Oh, YongKyung, Zheng, Henry W., Feng, Jeffrey, Bui, Alex A. T.
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2605.08963
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author Oh, YongKyung
Zheng, Henry W.
Feng, Jeffrey
Bui, Alex A. T.
author_facet Oh, YongKyung
Zheng, Henry W.
Feng, Jeffrey
Bui, Alex A. T.
contents Machine Learning (ML) models trained on complex health surveys such as the National Health and Nutrition Examination Survey (NHANES) often ignore primary sampling units, stratification variables, and sampling weights. This practice violates the independence assumptions of standard evaluation methods. As a result, estimates become biased, uncertainty is underestimated, and fairness assessments fail to reflect population-level disparities. We propose Survey-aware Machine Learning (SaML), a nine-step guideline that incorporates survey design metadata across the ML lifecycle. Through a scoping review of 16 methodological papers, we summarize existing work on weighted model training, design-based cross-validation, and survey-adjusted performance evaluation. We also identify gaps in hyperparameter tuning and deployment. We provide task-specific guidance that clarifies which steps are required for different analytical objectives. SaML provides a checklist for valid population inference from survey data.
format Preprint
id arxiv_https___arxiv_org_abs_2605_08963
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Survey-aware Machine Learning: A Guideline for Valid Population Health Inference based on Scoping Review
Oh, YongKyung
Zheng, Henry W.
Feng, Jeffrey
Bui, Alex A. T.
Machine Learning
Machine Learning (ML) models trained on complex health surveys such as the National Health and Nutrition Examination Survey (NHANES) often ignore primary sampling units, stratification variables, and sampling weights. This practice violates the independence assumptions of standard evaluation methods. As a result, estimates become biased, uncertainty is underestimated, and fairness assessments fail to reflect population-level disparities. We propose Survey-aware Machine Learning (SaML), a nine-step guideline that incorporates survey design metadata across the ML lifecycle. Through a scoping review of 16 methodological papers, we summarize existing work on weighted model training, design-based cross-validation, and survey-adjusted performance evaluation. We also identify gaps in hyperparameter tuning and deployment. We provide task-specific guidance that clarifies which steps are required for different analytical objectives. SaML provides a checklist for valid population inference from survey data.
title Survey-aware Machine Learning: A Guideline for Valid Population Health Inference based on Scoping Review
topic Machine Learning
url https://arxiv.org/abs/2605.08963