Abstract
Multiple imputation is a straightforward method for handling missing data in a principled fashion. This paper presents an overview of multiple imputation, including important theoretical results and their practical implications for generating and using multiple imputations. A review of strategies for generating imputations follows, including recent developments in flexible joint modeling and sequential regression/chained equations/fully conditional specification approaches. Finally, we compare and contrast different methods for generating imputations on a range of criteria before identifying promising avenues for future research.
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Murray, J. S. (2018). Multiple imputation: A review of practical and theoretical findings. Statistical Science, 33(2), 142–159. https://doi.org/10.1214/18-STS644
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