<div><p>This article compares a variety of imputation strategies for ordinal missing data on Likert scale variables (number of categories = 2, 3, 5, or 7) in recovering reliability coefficients, mean scale scores, and regression coefficients of predicting one scale score from another. The examined strategies include imputing using normal data models with naïve rounding/without rounding, using latent variable models, and using categorical data models such as discriminant analysis and binary logistic regression (for dichotomous data only), multinomial and proportional odds logistic regression (for polytomous data only). The result suggests that both the normal model approach without rounding and the latent variable model approach perform well...
Researchers in many fields use multiple item scales to measure important vari-ables such as attitude...
Missing data is an eternal problem in data analysis. It is widely recognised that data is costly to ...
Missing data is a prevalent problem in data analysis. In the present dissertation I investigated the...
Consider a data set with several polytomous variables that measure the same underlying trait. Assume...
Simulations were used to compare complete case analysis of ordinal data with including multivariate ...
In this paper, we compare alternative missing imputation methods in the presence of ordinal data, in...
© 2015 Taylor & Francis Group, LLC. Multiple imputation (MI) is now a reference solution for handl...
© 2016 Jemishabye ApajeeMissing data are common in medical research. One area where missing data can...
© 2016 Informa UK Limited, trading as Taylor & Francis Group. Missing data often complicate the an...
[[abstract]]Multiple imputation can be used to solve the problem of missing data that is a common oc...
Abstract The application of multiple imputation (MI) techniques as a preliminary step to handle miss...
The purpose of this study is to investigate the psychometric properties of scales with different mis...
The performance of multiple imputation (MI) for missing data in Likert-type items assuming multivari...
Missing data are ubiquitous in educational research settings, including item responses in multilevel...
The paper is motivated by the analysis of the relationship between ratings and teacher practices and...
Researchers in many fields use multiple item scales to measure important vari-ables such as attitude...
Missing data is an eternal problem in data analysis. It is widely recognised that data is costly to ...
Missing data is a prevalent problem in data analysis. In the present dissertation I investigated the...
Consider a data set with several polytomous variables that measure the same underlying trait. Assume...
Simulations were used to compare complete case analysis of ordinal data with including multivariate ...
In this paper, we compare alternative missing imputation methods in the presence of ordinal data, in...
© 2015 Taylor & Francis Group, LLC. Multiple imputation (MI) is now a reference solution for handl...
© 2016 Jemishabye ApajeeMissing data are common in medical research. One area where missing data can...
© 2016 Informa UK Limited, trading as Taylor & Francis Group. Missing data often complicate the an...
[[abstract]]Multiple imputation can be used to solve the problem of missing data that is a common oc...
Abstract The application of multiple imputation (MI) techniques as a preliminary step to handle miss...
The purpose of this study is to investigate the psychometric properties of scales with different mis...
The performance of multiple imputation (MI) for missing data in Likert-type items assuming multivari...
Missing data are ubiquitous in educational research settings, including item responses in multilevel...
The paper is motivated by the analysis of the relationship between ratings and teacher practices and...
Researchers in many fields use multiple item scales to measure important vari-ables such as attitude...
Missing data is an eternal problem in data analysis. It is widely recognised that data is costly to ...
Missing data is a prevalent problem in data analysis. In the present dissertation I investigated the...