The current study evaluated the performance of traditional versus modern MDTs in the estimation of fixed-effects and variance components for data missing at the second level of an hierarchical linear model (HLM) model across 24 different study conditions. Variables manipulated in the analysis included, (a) number of Level-2 variables with missing data, (b) percentage of missing data, and (c) Level-2 sample size. Listwise deletion outperformed all other methods across all study conditions in the estimation of both fixed-effects and variance components. The model-based procedures evaluated, EM and MI, outperformed the other traditional MDTs, mean and group mean substitution, in the estimation of the variance components, outperforming mean ...
In multiple linear regression, if the incomplete values occur in sample, many researchers will use t...
When data for multiple outcomes are collected in a multilevel design, researchers can select a univa...
abstract: Accurate data analysis and interpretation of results may be influenced by many potential f...
This Monte Carlo study examined the relative performance of four missing data treatment (MDT) approa...
The development of model-based methods for missing data has been a seminal contribution to statistic...
Problems of missing data are pervasive in social science research. Because of this, researchers have...
textThe purpose of this study was to investigate the performance of missing data treatments for long...
University of Minnesota Ph.D. dissertation. June 2013. Major: Educational Psychology. Advisor: Dr. M...
The purpose of this simulation study was to evaluate the relative performance of five missing data t...
In this simulation study, the bias in regression coefficient estimates was investigated in a four-pr...
The purpose of this study was to investigate, within the context of a two-predictor multiple regress...
I hereby declare that I am the sole author of this thesis. This is a true copy of the thesis, includ...
This study investigated the effectiveness of ten missing data treatments within the context of a two...
Missing observations are common in cluster randomised trials. Approaches taken to handling such miss...
With most clinical trials, missing data presents a statistical problem in evaluating a treatment\u27...
In multiple linear regression, if the incomplete values occur in sample, many researchers will use t...
When data for multiple outcomes are collected in a multilevel design, researchers can select a univa...
abstract: Accurate data analysis and interpretation of results may be influenced by many potential f...
This Monte Carlo study examined the relative performance of four missing data treatment (MDT) approa...
The development of model-based methods for missing data has been a seminal contribution to statistic...
Problems of missing data are pervasive in social science research. Because of this, researchers have...
textThe purpose of this study was to investigate the performance of missing data treatments for long...
University of Minnesota Ph.D. dissertation. June 2013. Major: Educational Psychology. Advisor: Dr. M...
The purpose of this simulation study was to evaluate the relative performance of five missing data t...
In this simulation study, the bias in regression coefficient estimates was investigated in a four-pr...
The purpose of this study was to investigate, within the context of a two-predictor multiple regress...
I hereby declare that I am the sole author of this thesis. This is a true copy of the thesis, includ...
This study investigated the effectiveness of ten missing data treatments within the context of a two...
Missing observations are common in cluster randomised trials. Approaches taken to handling such miss...
With most clinical trials, missing data presents a statistical problem in evaluating a treatment\u27...
In multiple linear regression, if the incomplete values occur in sample, many researchers will use t...
When data for multiple outcomes are collected in a multilevel design, researchers can select a univa...
abstract: Accurate data analysis and interpretation of results may be influenced by many potential f...