Authors
Oliver Lüdtke, Alexander Robitzsch, Simon Grund
Publication date
2017
Journal
Psychological Methods
Volume
22
Issue
1
Pages
141-164
Publisher
American Psychological Association
Description
Multiple imputation is a widely recommended means of addressing the problem of missing data in psychological research. An often-neglected requirement of this approach is that the imputation model used to generate the imputed values must be at least as general as the analysis model. For multilevel designs in which lower level units (eg, students) are nested within higher level units (eg, classrooms), this means that the multilevel structure must be taken into account in the imputation model. In the present article, we compare different strategies for multiply imputing incomplete multilevel data using mathematical derivations and computer simulations. We show that ignoring the multilevel structure in the imputation may lead to substantial negative bias in estimates of intraclass correlations as well as biased estimates of regression coefficients in multilevel models. We also demonstrate that an ad hoc strategy that …
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