The performance of multiple imputation (MI) for missing data in Likert-type items assuming multivariate normality was assessed using simulation methods. MI was robust to violations of continuity and normality. With 30% of missing data, MAR conditions resulted in negatively biased correlations. With 50% missingness, all results were negatively biased
Missing data is common in real-world studies and can create issues in statistical inference. Discard...
Missing data is common in real-world studies and can create issues in statistical inference. Discard...
Missing data is a common problem in datasets that are obtained by administration of educational and ...
Objectives Regardless of the proportion of missing values, complete-case analysis is most frequently...
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...
When exploring missing data techniques in a realistic scenario, the current literature is limited: m...
EnThe aim of this paper is two-fold: to propose the imputation procedure named ABBN for replacing mi...
Missing data are a common problem in organizational research. Missing data can occur due to attritio...
Simulations were used to compare complete case analysis of ordinal data with including multivariate ...
© 2016 Informa UK Limited, trading as Taylor & Francis Group. Missing data often complicate the an...
Missing data are an important practical problem in many applications of statistics, including social...
Abstract In multiple imputation, the resulting estimates are consistent if the im-putation model is ...
Missing data is a prevalent problem in data analysis. In the present dissertation I investigated the...
Missing data is common in real-world studies and can create issues in statistical inference. Discard...
Missing data is common in real-world studies and can create issues in statistical inference. Discard...
Missing data is a common problem in datasets that are obtained by administration of educational and ...
Objectives Regardless of the proportion of missing values, complete-case analysis is most frequently...
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...
When exploring missing data techniques in a realistic scenario, the current literature is limited: m...
EnThe aim of this paper is two-fold: to propose the imputation procedure named ABBN for replacing mi...
Missing data are a common problem in organizational research. Missing data can occur due to attritio...
Simulations were used to compare complete case analysis of ordinal data with including multivariate ...
© 2016 Informa UK Limited, trading as Taylor & Francis Group. Missing data often complicate the an...
Missing data are an important practical problem in many applications of statistics, including social...
Abstract In multiple imputation, the resulting estimates are consistent if the im-putation model is ...
Missing data is a prevalent problem in data analysis. In the present dissertation I investigated the...
Missing data is common in real-world studies and can create issues in statistical inference. Discard...
Missing data is common in real-world studies and can create issues in statistical inference. Discard...
Missing data is a common problem in datasets that are obtained by administration of educational and ...