Journal article

Model checking in multiple imputation: An overview and case study

CD Nguyen, JB Carlin, KJ Lee

Emerging Themes in Epidemiology | BMC | Published : 2017

Abstract

Background: Multiple imputation has become very popular as a general-purpose method for handling missing data. The validity of multiple-imputation-based analyses relies on the use of an appropriate model to impute the missing values. Despite the widespread use of multiple imputation, there are few guidelines available for checking imputation models. Analysis: In this paper, we provide an overview of currently available methods for checking imputation models. These include graphical checks and numerical summaries, as well as simulation-based methods such as posterior predictive checking. These model checking techniques are illustrated using an analysis affected by missing data from the Longit..

View full abstract

Grants

Awarded by Seventh Framework Programme


Funding Acknowledgements

This work was supported by funding from the National Health and Medical Research Council: Career Development Fellowship ID 1053609 (KJL), Project Grant ID 607400 (JBC, KJL), Project Grant ID 1127984 (KJL, JBC) and a Centre of Research Excellence grant ID 1035261 (JBC), which funded the Victorian Centre for Biostatistics (ViCBiostat).