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 Longitudinal Study of Australian Children. CONCLUSIONS: ...
Missing data is common in real-world studies and can create issues in statistical inference. Discard...
BACKGROUND: Three-level data arising from repeated measures on individuals who are clustered within ...
A practical guide to analysing partially observed data. Collecting, analysing and drawing inference...
© 2014 Dr. Cattram NguyenMultiple imputation is an increasingly popular method for handling missing ...
Summary. In problems with missing or latent data, a standard approach is to first impute the unobser...
Multiple imputation is a recommended method for handling incomplete data problems. One of the barrie...
Missing data are a common problem in organizational research. Missing data can occur due to attritio...
Multiple imputation has entered mainstream practice for the analysis of incomplete data. We have use...
Educational production functions rely mostly on longitudinal data that almost always exhibit missing...
Despite a well-designed and controlled study, missing values are consistently present inresearch. It...
Abstract In multiple imputation, the resulting estimates are consistent if the im-putation model is ...
Educational production functions rely mostly on longitudinal data that almost always exhibit missing...
A common challenge in developmental research is the amount of incomplete and missing data that occur...
Objectives Regardless of the proportion of missing values, complete-case analysis is most frequently...
Multiple imputation provides a useful strategy for dealing with data sets with missing values. Inste...
Missing data is common in real-world studies and can create issues in statistical inference. Discard...
BACKGROUND: Three-level data arising from repeated measures on individuals who are clustered within ...
A practical guide to analysing partially observed data. Collecting, analysing and drawing inference...
© 2014 Dr. Cattram NguyenMultiple imputation is an increasingly popular method for handling missing ...
Summary. In problems with missing or latent data, a standard approach is to first impute the unobser...
Multiple imputation is a recommended method for handling incomplete data problems. One of the barrie...
Missing data are a common problem in organizational research. Missing data can occur due to attritio...
Multiple imputation has entered mainstream practice for the analysis of incomplete data. We have use...
Educational production functions rely mostly on longitudinal data that almost always exhibit missing...
Despite a well-designed and controlled study, missing values are consistently present inresearch. It...
Abstract In multiple imputation, the resulting estimates are consistent if the im-putation model is ...
Educational production functions rely mostly on longitudinal data that almost always exhibit missing...
A common challenge in developmental research is the amount of incomplete and missing data that occur...
Objectives Regardless of the proportion of missing values, complete-case analysis is most frequently...
Multiple imputation provides a useful strategy for dealing with data sets with missing values. Inste...
Missing data is common in real-world studies and can create issues in statistical inference. Discard...
BACKGROUND: Three-level data arising from repeated measures on individuals who are clustered within ...
A practical guide to analysing partially observed data. Collecting, analysing and drawing inference...