Our mi package in R has several features that allow the user to get inside the imputation process and evaluate the reasonableness of the resulting models and imputations. These features include: choice of predictors, models, and transformations for chained imputation models; standard and binned residual plots for checking the fit of the conditional distributions used for imputation; and plots for comparing the distributions of observed and imputed data. In addition, we use Bayesian models and weakly informative prior distributions to construct more stable estimates of imputation models. Our goal is to have a demonstration package that (a) avoids many of the practical problems that arise with existing multivariate imputation programs, and (b...
A practical guide to analysing partially observed data. Collecting, analysing and drawing inference...
Missing data are ubiquitous in clinical and social research, and multiple imputation (MI) is increas...
Missing data is one of the challenges we are facing today in modeling valid statistical models. It r...
Our mi package in R has several features that allow the user to get inside the imputation process an...
Our mi package in R has several features that allow the user to get inside the impu-tation process a...
© 2014 Dr. Cattram NguyenMultiple imputation is an increasingly popular method for handling missing ...
This book explores missing data techniques and provides a detailed and easy-to-read introduction to ...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/122409/1/sim6926_am.pdfhttp://deepblue....
Owing to its practicality as well as strong inferential properties, multiple imputation has been inc...
Multiple imputation (MI) is a commonly applied method of statistically handling missing data. It inv...
The method of multiple imputation (MI) is used increasingly for analyzing datasets with missing obse...
Amelia II is a complete R package for multiple imputation of missing data. The package implements a ...
Multiple imputation (MI) is a method for repairing and analyzing data with missing values. MI replac...
AbstractMultiple imputation is a popular way to handle missing data. Automated procedures are widely...
The R package mice imputes incomplete multivariate data by chained equations. The software mice 1.0 ...
A practical guide to analysing partially observed data. Collecting, analysing and drawing inference...
Missing data are ubiquitous in clinical and social research, and multiple imputation (MI) is increas...
Missing data is one of the challenges we are facing today in modeling valid statistical models. It r...
Our mi package in R has several features that allow the user to get inside the imputation process an...
Our mi package in R has several features that allow the user to get inside the impu-tation process a...
© 2014 Dr. Cattram NguyenMultiple imputation is an increasingly popular method for handling missing ...
This book explores missing data techniques and provides a detailed and easy-to-read introduction to ...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/122409/1/sim6926_am.pdfhttp://deepblue....
Owing to its practicality as well as strong inferential properties, multiple imputation has been inc...
Multiple imputation (MI) is a commonly applied method of statistically handling missing data. It inv...
The method of multiple imputation (MI) is used increasingly for analyzing datasets with missing obse...
Amelia II is a complete R package for multiple imputation of missing data. The package implements a ...
Multiple imputation (MI) is a method for repairing and analyzing data with missing values. MI replac...
AbstractMultiple imputation is a popular way to handle missing data. Automated procedures are widely...
The R package mice imputes incomplete multivariate data by chained equations. The software mice 1.0 ...
A practical guide to analysing partially observed data. Collecting, analysing and drawing inference...
Missing data are ubiquitous in clinical and social research, and multiple imputation (MI) is increas...
Missing data is one of the challenges we are facing today in modeling valid statistical models. It r...