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Combining Multiple Imputation and Inverse-Probability Weighting

SUMMARY: Two approaches commonly used to deal with missing data are multiple imputation (MI) and inverse-probability weighting (IPW). IPW is also used to adjust for unequal sampling fractions. MI is generally more efficient than IPW but more complex. Whereas IPW requires only a model for the probabi...

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Autores principales: Seaman, Shaun R, White, Ian R, Copas, Andrew J, Li, Leah
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Blackwell Publishing Inc 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3412287/
https://www.ncbi.nlm.nih.gov/pubmed/22050039
http://dx.doi.org/10.1111/j.1541-0420.2011.01666.x
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author Seaman, Shaun R
White, Ian R
Copas, Andrew J
Li, Leah
author_facet Seaman, Shaun R
White, Ian R
Copas, Andrew J
Li, Leah
author_sort Seaman, Shaun R
collection PubMed
description SUMMARY: Two approaches commonly used to deal with missing data are multiple imputation (MI) and inverse-probability weighting (IPW). IPW is also used to adjust for unequal sampling fractions. MI is generally more efficient than IPW but more complex. Whereas IPW requires only a model for the probability that an individual has complete data (a univariate outcome), MI needs a model for the joint distribution of the missing data (a multivariate outcome) given the observed data. Inadequacies in either model may lead to important bias if large amounts of data are missing. A third approach combines MI and IPW to give a doubly robust estimator. A fourth approach (IPW/MI) combines MI and IPW but, unlike doubly robust methods, imputes only isolated missing values and uses weights to account for remaining larger blocks of unimputed missing data, such as would arise, e.g., in a cohort study subject to sample attrition, and/or unequal sampling fractions. In this article, we examine the performance, in terms of bias and efficiency, of IPW/MI relative to MI and IPW alone and investigate whether the Rubin’s rules variance estimator is valid for IPW/MI. We prove that the Rubin’s rules variance estimator is valid for IPW/MI for linear regression with an imputed outcome, we present simulations supporting the use of this variance estimator in more general settings, and we demonstrate that IPW/MI can have advantages over alternatives. IPW/MI is applied to data from the National Child Development Study.
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spelling pubmed-34122872012-08-07 Combining Multiple Imputation and Inverse-Probability Weighting Seaman, Shaun R White, Ian R Copas, Andrew J Li, Leah Biometrics Biometric Methodology SUMMARY: Two approaches commonly used to deal with missing data are multiple imputation (MI) and inverse-probability weighting (IPW). IPW is also used to adjust for unequal sampling fractions. MI is generally more efficient than IPW but more complex. Whereas IPW requires only a model for the probability that an individual has complete data (a univariate outcome), MI needs a model for the joint distribution of the missing data (a multivariate outcome) given the observed data. Inadequacies in either model may lead to important bias if large amounts of data are missing. A third approach combines MI and IPW to give a doubly robust estimator. A fourth approach (IPW/MI) combines MI and IPW but, unlike doubly robust methods, imputes only isolated missing values and uses weights to account for remaining larger blocks of unimputed missing data, such as would arise, e.g., in a cohort study subject to sample attrition, and/or unequal sampling fractions. In this article, we examine the performance, in terms of bias and efficiency, of IPW/MI relative to MI and IPW alone and investigate whether the Rubin’s rules variance estimator is valid for IPW/MI. We prove that the Rubin’s rules variance estimator is valid for IPW/MI for linear regression with an imputed outcome, we present simulations supporting the use of this variance estimator in more general settings, and we demonstrate that IPW/MI can have advantages over alternatives. IPW/MI is applied to data from the National Child Development Study. Blackwell Publishing Inc 2012-03 /pmc/articles/PMC3412287/ /pubmed/22050039 http://dx.doi.org/10.1111/j.1541-0420.2011.01666.x Text en © 2011, The International Biometric Society http://creativecommons.org/licenses/by/2.5/ Re-use of this article is permitted in accordance with the Terms and Conditions set out at http://wileyonlinelibrary.com/onlineopen#OnlineOpen_Terms
spellingShingle Biometric Methodology
Seaman, Shaun R
White, Ian R
Copas, Andrew J
Li, Leah
Combining Multiple Imputation and Inverse-Probability Weighting
title Combining Multiple Imputation and Inverse-Probability Weighting
title_full Combining Multiple Imputation and Inverse-Probability Weighting
title_fullStr Combining Multiple Imputation and Inverse-Probability Weighting
title_full_unstemmed Combining Multiple Imputation and Inverse-Probability Weighting
title_short Combining Multiple Imputation and Inverse-Probability Weighting
title_sort combining multiple imputation and inverse-probability weighting
topic Biometric Methodology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3412287/
https://www.ncbi.nlm.nih.gov/pubmed/22050039
http://dx.doi.org/10.1111/j.1541-0420.2011.01666.x
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