Comparison of Multiple Imputation Methods for Categorical Survey Items with High Missing Rates: Application to the Family Life, Activity, Sun, Health and Eating (FLASHE) Study
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Aug 16, 2023
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Benmei Liu
National Cancer Institute, Rockville
Erin Hennessy
Tufts University, Medford
April Oh
National Cancer Institute, Rockville
Laura A. Dwyer
National Cancer Institute, Rockville
Linda Nebeling
National Cancer Institute, Rockville
Abstract
Two multiple imputation methods, the Sequential Regression Multivariate Imputation Algorithm and the Cox-Lannacchione Weighted Sequential Hotdeck, were examined and compared to impute highly missing categorical variables from the Family Life, Activity, Sun, Health and Eating (FLASHE) study. This paper describes the imputation approaches and results from the study.
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