Analysis of Incomplete Data Using Inverse Probability Weighting and Doubly Robust Estimators
Stijn Vansteelandt
;
James Carpenter
;
Michael G Kenward;
(2010)
Analysis of Incomplete Data Using Inverse Probability Weighting and Doubly Robust Estimators.
Methodology, 6 (1).
pp. 37-48.
ISSN 1614-1881
DOI: 10.1027/1614-2241/a000005
<jats:p> This article reviews inverse probability weighting methods and doubly robust estimation methods for the analysis of incomplete data sets. We first consider methods for estimating a population mean when the outcome is missing at random, in the sense that measured covariates can explain whether or not the outcome is observed. We then sketch the rationale of these methods and elaborate on their usefulness in the presence of influential inverse weights. We finally outline how to apply these methods in a variety of settings, such as for fitting regression models with incomplete outcomes or covariates, emphasizing the use of standard software programs. </jats:p>
Item Type | Article |
---|---|
Keywords | doubly robust estimation, extrapolation, extreme weights, Horvitz-Thompson estimator, inverse probability weighting, missing, data, multiple imputation, MISSING DATA, MULTIPLE IMPUTATION, REGRESSION-MODELS, REPEATED, OUTCOMES, INFERENCE, NONRESPONSE |
ISI | 279183000005 |
ORCID: https://orcid.org/0000-0002-4207-8733
ORCID: https://orcid.org/0000-0003-3890-6206