4.2 Article

Iterative Multiple Imputation: A Framework to Determine the Number of Imputed Datasets

Journal

AMERICAN STATISTICIAN
Volume 74, Issue 2, Pages 125-136

Publisher

TAYLOR & FRANCIS INC
DOI: 10.1080/00031305.2018.1543615

Keywords

Central limit theorem; Incomplete data; Iterative procedure; Missing data

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We consider multiple imputation as a procedure iterating over a set of imputed datasets. Based on an appropriate stopping rule the number of imputed datasets is determined. Simulations and real-data analyses indicate that the sufficient number of imputed datasets may in some cases be substantially larger than the very small numbers that are usually recommended. For an easier use in various applications, the proposed method is implemented in the R package imi.

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