© 2015 Taylor & Francis Group, LLC. 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 In the presence of longitudinal ordinal missing data, where the Gaussian assumption is no longer valid, application of the MNI method is questionable.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.peerreview_statement: The publishing and revie...
We developed an imputation model solving the missing-data problem in a high-dimensional longitudinal...
A popular choice when analyzing ordinal data is to consider the cumulative proportional odds model t...
© 2015 Taylor & Francis. A popular choice when analyzing ordinal data is to consider the cumulativ...
Abstract The application of multiple imputation (MI) techniques as a preliminary step to handle miss...
[[abstract]]Multiple imputation can be used to solve the problem of missing data that is a common oc...
The application of multiple imputation (MI) techniques as a preliminary step to handle missing value...
The application of multiple imputation (MI) techniques as a preliminary step to handle missing value...
© 2016 Informa UK Limited, trading as Taylor & Francis Group. Missing data often complicate the an...
Abstract The application of multiple imputation (MI) techniques as a preliminary step to handle miss...
Simulations were used to compare complete case analysis of ordinal data with including multivariate ...
Simulations were used to compare complete case analysis of ordinal data with including multivariate ...
SUMMARY. This paper outlines a multiple imputation method for handling missing data in designed lon-...
Abstract Background Multiple imputation (MI) is now widely used to handle missing data in longitudin...
Longitudinal binary data are commonly encountered in clinical trials. Multiple imputation is an appr...
This paper outlines a multiple imputation method for handling missing data in designed longitudinal ...
We developed an imputation model solving the missing-data problem in a high-dimensional longitudinal...
A popular choice when analyzing ordinal data is to consider the cumulative proportional odds model t...
© 2015 Taylor & Francis. A popular choice when analyzing ordinal data is to consider the cumulativ...
Abstract The application of multiple imputation (MI) techniques as a preliminary step to handle miss...
[[abstract]]Multiple imputation can be used to solve the problem of missing data that is a common oc...
The application of multiple imputation (MI) techniques as a preliminary step to handle missing value...
The application of multiple imputation (MI) techniques as a preliminary step to handle missing value...
© 2016 Informa UK Limited, trading as Taylor & Francis Group. Missing data often complicate the an...
Abstract The application of multiple imputation (MI) techniques as a preliminary step to handle miss...
Simulations were used to compare complete case analysis of ordinal data with including multivariate ...
Simulations were used to compare complete case analysis of ordinal data with including multivariate ...
SUMMARY. This paper outlines a multiple imputation method for handling missing data in designed lon-...
Abstract Background Multiple imputation (MI) is now widely used to handle missing data in longitudin...
Longitudinal binary data are commonly encountered in clinical trials. Multiple imputation is an appr...
This paper outlines a multiple imputation method for handling missing data in designed longitudinal ...
We developed an imputation model solving the missing-data problem in a high-dimensional longitudinal...
A popular choice when analyzing ordinal data is to consider the cumulative proportional odds model t...
© 2015 Taylor & Francis. A popular choice when analyzing ordinal data is to consider the cumulativ...