This paper outlines a strategy to validate multiple imputation methods. Rubin’s criteria for proper multiple imputation are the point of departure. We describe a simulation method that yields insight into various aspects of bias and efficiency of the imputation process. We propose a new method for creating incomplete data under a general Missing At Random (MAR) mechanism. Software implementing the validation strategy is available as a SAS/IML module. The method is applied to investigate the behavior of polytomous regression impu-tation for categorical data. Key Words and Phrases: multiple imputation, proper imputation, missing data mechanism, simulation
BACKGROUND: Multiple imputation has become very popular as a general-purpose method for handling mis...
Longitudinal binary data are commonly encountered in clinical trials. Multiple imputation is an appr...
The method of multiple imputation (MI) is used increasingly for analyzing datasets with missing obse...
This paper outlines a strategy to validate multiple imputation methods. Rubin's criteria for proper ...
Multiple imputation provides a useful strategy for dealing with data sets that have missing values. ...
Multiple imputation provides a useful strategy for dealing with data sets with missing values. Inste...
Abstract In multiple imputation, the resulting estimates are consistent if the im-putation model is ...
Missing data are a common problem in organizational research. Missing data can occur due to attritio...
Use of multiple imputation to replace missing outcomes in clinical research is a relatively new appr...
Imputation is a commonly used method to handle missing survey data. The performance of the imputatio...
It is now widely accepted that multiple imputation (MI) methods properly handle the uncertainty of m...
Multiple imputation (MI) is a commonly applied method of statistically handling missing data. It inv...
It is now widely accepted that multiple imputation (MI) methods properly handle the uncertainty of m...
In this paper we describe MIDAS: a SAS macro for multiple imputation using distance aided selection ...
Missing data are common in clinical trials. In longitudinal studies missing data are mostly related ...
BACKGROUND: Multiple imputation has become very popular as a general-purpose method for handling mis...
Longitudinal binary data are commonly encountered in clinical trials. Multiple imputation is an appr...
The method of multiple imputation (MI) is used increasingly for analyzing datasets with missing obse...
This paper outlines a strategy to validate multiple imputation methods. Rubin's criteria for proper ...
Multiple imputation provides a useful strategy for dealing with data sets that have missing values. ...
Multiple imputation provides a useful strategy for dealing with data sets with missing values. Inste...
Abstract In multiple imputation, the resulting estimates are consistent if the im-putation model is ...
Missing data are a common problem in organizational research. Missing data can occur due to attritio...
Use of multiple imputation to replace missing outcomes in clinical research is a relatively new appr...
Imputation is a commonly used method to handle missing survey data. The performance of the imputatio...
It is now widely accepted that multiple imputation (MI) methods properly handle the uncertainty of m...
Multiple imputation (MI) is a commonly applied method of statistically handling missing data. It inv...
It is now widely accepted that multiple imputation (MI) methods properly handle the uncertainty of m...
In this paper we describe MIDAS: a SAS macro for multiple imputation using distance aided selection ...
Missing data are common in clinical trials. In longitudinal studies missing data are mostly related ...
BACKGROUND: Multiple imputation has become very popular as a general-purpose method for handling mis...
Longitudinal binary data are commonly encountered in clinical trials. Multiple imputation is an appr...
The method of multiple imputation (MI) is used increasingly for analyzing datasets with missing obse...