4.1 Article

Multiple imputation in multivariate problems when the imputation and analysis models differ

Journal

STATISTICA NEERLANDICA
Volume 57, Issue 1, Pages 19-35

Publisher

WILEY
DOI: 10.1111/1467-9574.00218

Keywords

missing data; nonresponse

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Bayesian multiple imputation (MI) has become a highly useful paradigm for handling missing values in many settings. In this paper, I compare Bayesian MI with other methods - maximum likelihood, in particular-and point out some of its unique features. One key aspect of MI, the separation of the imputation phase from the analysis phase, can be advantageous in settings where the models underlying the two phases do not agree.

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