4.5 Article

A note on median regression for complex surveys

Journal

BIOSTATISTICS
Volume 23, Issue 4, Pages 1074-1082

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/biostatistics/kxab035

Keywords

Asymptotic normality; Bootstrap; Complex survey; Median regression; Quantile regression; Resampling methods; Variance estimation

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There is a need for statistical methods to analyze skewed responses in complex sample surveys. This study proposes using quantile regression to address this problem, and shows how to correctly estimate the variance by considering the survey design. The results demonstrate that the variance of the median regression estimator has minimal bias and appropriate coverage probability. The motivation for this work comes from the National Health and Nutrition Examination Survey, where the impact of the results on iodine deficiency in females compared to males with adjustment for other covariates is demonstrated.
There is a great need for statistical methods for analyzing skewed responses in complex sample surveys. Quantile regression is a logical option in addressing this problem but is often accompanied by incorrect variance estimation. We show how the variance can be estimated correctly by including the survey design in the variance estimation process. In a simulation study, we illustrate that the variance of the median regression estimator has a very small relative bias with appropriate coverage probability. The motivation for our work stems from the National Health and Nutrition Examination Survey where we demonstrate the impact of our results on iodine deficiency in females compared with males adjusting for other covariates.

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