Multiple imputation method is a widely used method in missing data analysis. The method consists of a three-stage process including imputation, analyzing and pooling. The number of imputations to be selected in the imputation step in the first stage is important. Hence, this study aimed to examine the performance of multiple imputation method at different numbers of imputations. Monotone missing data pattern was created in the study by deleting approximately 24% of the observations from the continuous result variable with complete data. At the first stage of the multiple imputation method, monotone regression imputation at different numbers of imputations (m=3, 5, 10 and 50) was performed. In the second stage, parameter estimations and thei...
Missing data is a prevalent problem in data analysis. In the present dissertation I investigated the...
Most data sets from sample surveys contain incomplete observations for various reasons, such as a re...
A practical guide to analysing partially observed data. Collecting, analysing and drawing inference...
Multiple imputation method is a widely used method in missing data analysis. The method consists of ...
Abstract Multiple imputation (MI) and full information maximum likelihood (FIML) are the two most co...
Abstract In multiple imputation, the resulting estimates are consistent if the im-putation model is ...
Objectives Regardless of the proportion of missing values, complete-case analysis is most frequently...
Abstract Background Multiple imputation is frequently used to address missing data when conducting s...
Multiple imputation (MI) is a commonly applied method of statistically handling missing data. It inv...
© 2016 Informa UK Limited, trading as Taylor & Francis Group. Missing data often complicate the an...
Objectives: Regardless of the proportion of missing values, complete-case analysis is most frequentl...
Objectives: Regardless of the proportion of missing values, complete-case analysis is most frequentl...
Objectives: Regardless of the proportion of missing values, complete-case analysis is most frequentl...
Iterative multiple imputation is a popular technique for missing data analysis. It updates the param...
Multiple imputation (MI) is increasingly being used to handle missing data in epidemiologic research...
Missing data is a prevalent problem in data analysis. In the present dissertation I investigated the...
Most data sets from sample surveys contain incomplete observations for various reasons, such as a re...
A practical guide to analysing partially observed data. Collecting, analysing and drawing inference...
Multiple imputation method is a widely used method in missing data analysis. The method consists of ...
Abstract Multiple imputation (MI) and full information maximum likelihood (FIML) are the two most co...
Abstract In multiple imputation, the resulting estimates are consistent if the im-putation model is ...
Objectives Regardless of the proportion of missing values, complete-case analysis is most frequently...
Abstract Background Multiple imputation is frequently used to address missing data when conducting s...
Multiple imputation (MI) is a commonly applied method of statistically handling missing data. It inv...
© 2016 Informa UK Limited, trading as Taylor & Francis Group. Missing data often complicate the an...
Objectives: Regardless of the proportion of missing values, complete-case analysis is most frequentl...
Objectives: Regardless of the proportion of missing values, complete-case analysis is most frequentl...
Objectives: Regardless of the proportion of missing values, complete-case analysis is most frequentl...
Iterative multiple imputation is a popular technique for missing data analysis. It updates the param...
Multiple imputation (MI) is increasingly being used to handle missing data in epidemiologic research...
Missing data is a prevalent problem in data analysis. In the present dissertation I investigated the...
Most data sets from sample surveys contain incomplete observations for various reasons, such as a re...
A practical guide to analysing partially observed data. Collecting, analysing and drawing inference...