2024
DOI: 10.1002/bimj.202200291
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A comparison of strategies for selecting auxiliary variables for multiple imputation

Rheanna M. Mainzer,
Cattram D. Nguyen,
John B. Carlin
et al.

Abstract: Multiple imputation (MI) is a popular method for handling missing data. Auxiliary variables can be added to the imputation model(s) to improve MI estimates. However, the choice of which auxiliary variables to include is not always straightforward. Several data‐driven auxiliary variable selection strategies have been proposed, but there has been limited evaluation of their performance. Using a simulation study we evaluated the performance of eight auxiliary variable selection strategies: (1, 2) two versions of … Show more

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