Current pooling rules for multiply imputed data assume infinite populations. In some situations this assumption is not feasible as every unit in the population has been observed, potentially leading to over-covered population estimates. We simplify the existing pooling rules for situations where the sampling variance is not of interest. We compare these rules to the conventional pooling rules and demonstrate their use in a situation where there is no sampling variance. Using the standard pooling rules in situations where sampling variance should not be considered, leads to overestimation of the variance of the estimates of interest, especially when the amount of missingness is not very large. As a result, populations estimates are over-cove...
<p>*. Power adjusted for the nominal false positive rates.</p><p>The significance level = .05 (10<s...
This paper examined the use of multiple imputation to analyze heaped data. When people are asked to ...
Multiple imputation method is a widely used method in missing data analysis. The method consists of ...
Inference problems with incomplete observations often aim at estimating population prop-erties of un...
Inference problems with incomplete observations often aim at estimating population properties of uno...
Missing values are a problem that is often encountered in various fields and must be addressed to ob...
The theory of multiple imputation for missing data requires that imputations be made conditional on ...
This dissertation focuses on finding plausible imputations when there is some restriction posed on t...
UNLABELLED: BACKGROUND: Multiple imputation is becoming increasingly popular for handling missing d...
Abstract Multiple imputation (MI) and full information maximum likelihood (FIML) are the two most co...
We present an algorithm for imputation of incomplete datasets based on Bayesian exchangeability thro...
We present an algorithm for imputation of incomplete datasets based on Bayesian exchangeability thro...
This article is aimed at practitioners who plan to use Bayesian inference on multiply-imputed datase...
Abstract In multiple imputation, the resulting estimates are consistent if the im-putation model is ...
This article is aimed at practitioners who plan to use Bayesian inference on multiply-imputed datase...
<p>*. Power adjusted for the nominal false positive rates.</p><p>The significance level = .05 (10<s...
This paper examined the use of multiple imputation to analyze heaped data. When people are asked to ...
Multiple imputation method is a widely used method in missing data analysis. The method consists of ...
Inference problems with incomplete observations often aim at estimating population prop-erties of un...
Inference problems with incomplete observations often aim at estimating population properties of uno...
Missing values are a problem that is often encountered in various fields and must be addressed to ob...
The theory of multiple imputation for missing data requires that imputations be made conditional on ...
This dissertation focuses on finding plausible imputations when there is some restriction posed on t...
UNLABELLED: BACKGROUND: Multiple imputation is becoming increasingly popular for handling missing d...
Abstract Multiple imputation (MI) and full information maximum likelihood (FIML) are the two most co...
We present an algorithm for imputation of incomplete datasets based on Bayesian exchangeability thro...
We present an algorithm for imputation of incomplete datasets based on Bayesian exchangeability thro...
This article is aimed at practitioners who plan to use Bayesian inference on multiply-imputed datase...
Abstract In multiple imputation, the resulting estimates are consistent if the im-putation model is ...
This article is aimed at practitioners who plan to use Bayesian inference on multiply-imputed datase...
<p>*. Power adjusted for the nominal false positive rates.</p><p>The significance level = .05 (10<s...
This paper examined the use of multiple imputation to analyze heaped data. When people are asked to ...
Multiple imputation method is a widely used method in missing data analysis. The method consists of ...