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Original Articles

A Simulation Study Comparing Multiple Imputation Methods for Incomplete Longitudinal Ordinal Data

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Pages 1311-1338 | Received 27 Jul 2012, Accepted 14 Jun 2013, Published online: 23 Oct 2014
 

Abstract

Multiple imputation (MI) is now a reference solution for handling missing data. The default method for MI is the Multivariate Normal Imputation (MNI) algorithm that is based on the multivariate normal distribution. In the presence of longitudinal ordinal missing data, where the Gaussian assumption is no longer valid, application of the MNI method is questionable. This simulation study compares the performance of the MNI and ordinal imputation regression model for incomplete longitudinal ordinal data for situations covering various numbers of categories of the ordinal outcome, time occasions, sample sizes, rates of missingness, well-balanced, and skewed data.

Mathematics Subject Classification:

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