Missing the Point: Non-Convergence in Iterative Imputation Algorithms

Publication date

2020-06-10

Authors

Oberman, HanneORCID 0000-0003-3276-2141ISNI 0000000493077305
Van Buuren, S.ORCID 0000-0003-1098-2119ISNI 0000000032712898
Vink, GerkoORCID 0000-0001-9767-1924ISNI 0000000394871968

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Abstract

Iterative imputation is a popular tool to accommodate missing data. While it is widely accepted that valid inferences can be obtained with this technique, these inferences all rely on algorithmic convergence. There is no consensus on how to evaluate the convergence properties of the method. Our study provides insight into identifying non-convergence in iterative imputation algorithms. We found that---in the cases considered---inferential validity was achieved after five to ten iterations, much earlier than indicated by diagnostic methods. We conclude that it never hurts to iterate longer, but such calculations hardly bring added value.

Keywords

non-convergence, MICE, Iterative imputation

Citation

Oberman, H I, van Buuren, S & Vink, G 2020, Missing the Point: Non-Convergence in Iterative Imputation Algorithms. in First Workshop on the Art of Learning with Missing Values (Artemiss) hosted by the 37 th International Conference on Machine Learning (ICML).