In this paper, an approach to generate imputed values for count variables to incorporate missing data mechanism uncertainty is proposed. For multiple imputation, a distribution is considered in such a manner that it can reflect missing data mechanism uncertainty. For combining the parameter estimation of these imputed data sets the rules of nested multiple imputation are used. The performance of the multiple imputations is investigated using some simulation studies. Also, a real data set is analyzed using the proposed approach
The application of multiple imputation (MI) techniques as a preliminary step to handle missing value...
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...
The true missing data mechanism is never known in practice. We present a method for generating multi...
Missing data are an important practical problem in many applications of statistics, including social...
Missing values are a practical issue in the analysis of longitudinal data. Multiple imputation (MI) ...
Multiple imputation (MI) is increasingly used for handling missing data in medical research. The sta...
Biomedical research is plagued with problems of missing data, especially in clinical trials of medic...
Biomedical research is plagued with problems of missing data, especially in clinical trials of medi...
[[abstract]]Multiple imputation can be used to solve the problem of missing data that is a common oc...
Abstract In multiple imputation, the resulting estimates are consistent if the im-putation model is ...
This paper outlines a multiple imputation method for handling missing data in designed longitudinal ...
Abstract The application of multiple imputation (MI) techniques as a preliminary step to handle miss...
SUMMARY. This paper outlines a multiple imputation method for handling missing data in designed lon-...
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...
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...
The true missing data mechanism is never known in practice. We present a method for generating multi...
Missing data are an important practical problem in many applications of statistics, including social...
Missing values are a practical issue in the analysis of longitudinal data. Multiple imputation (MI) ...
Multiple imputation (MI) is increasingly used for handling missing data in medical research. The sta...
Biomedical research is plagued with problems of missing data, especially in clinical trials of medic...
Biomedical research is plagued with problems of missing data, especially in clinical trials of medi...
[[abstract]]Multiple imputation can be used to solve the problem of missing data that is a common oc...
Abstract In multiple imputation, the resulting estimates are consistent if the im-putation model is ...
This paper outlines a multiple imputation method for handling missing data in designed longitudinal ...
Abstract The application of multiple imputation (MI) techniques as a preliminary step to handle miss...
SUMMARY. This paper outlines a multiple imputation method for handling missing data in designed lon-...
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...
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...