University of Minnesota Ph.D. dissertation. June 2013. Major: Educational Psychology. Advisor: Dr. Michael Harwell. 1 computer file (PDF); xi, 244 pages, appendices A-L.Missing data often present problems for credible statistical analyses. Luckily there are valid methods for dealing with missing data but the context in which the data are missing can impact the performance of these methods. Relatively little is known about the proper way to handle missing data in multilevel data structures. This study used a Monte Carlo simulation to compare the performance of three missing data methods on multilevel data (multilevel multiple imputation, multiple imputation ignoring the multilevel structure, and listwise deletion). The comparison of these me...
abstract: Accurate data analysis and interpretation of results may be influenced by many potential f...
When exploring missing data techniques in a realistic scenario, the current literature is limited: m...
BACKGROUND: Three-level data arising from repeated measures on individuals who are clustered within ...
Missing data is common in real-world studies and can create issues in statistical inference. Discard...
This Monte Carlo study examined the relative performance of four missing data treatment (MDT) approa...
Problems of missing data are pervasive in social science research. Because of this, researchers have...
We present and compare multiple imputation methods for multilevel continuous and binary data where v...
We present and compare multiple imputation methods for multilevel continuous and binary data where v...
Missing data is pervasive in large-scale survey research with multiple scale measurements and nested...
Incomplete data are common in empirical research. The default solutions in software packages are ver...
Missing data are ubiquitous in educational research settings, including item responses in multilevel...
Previous research has shown that the multiple imputation (MI) approach faces challenges in giving pl...
abstract: Accurate data analysis and interpretation of results may be influenced by many potential f...
When exploring missing data techniques in a realistic scenario, the current literature is limited: m...
BACKGROUND: Three-level data arising from repeated measures on individuals who are clustered within ...
Missing data is common in real-world studies and can create issues in statistical inference. Discard...
This Monte Carlo study examined the relative performance of four missing data treatment (MDT) approa...
Problems of missing data are pervasive in social science research. Because of this, researchers have...
We present and compare multiple imputation methods for multilevel continuous and binary data where v...
We present and compare multiple imputation methods for multilevel continuous and binary data where v...
Missing data is pervasive in large-scale survey research with multiple scale measurements and nested...
Incomplete data are common in empirical research. The default solutions in software packages are ver...
Missing data are ubiquitous in educational research settings, including item responses in multilevel...
Previous research has shown that the multiple imputation (MI) approach faces challenges in giving pl...
abstract: Accurate data analysis and interpretation of results may be influenced by many potential f...
When exploring missing data techniques in a realistic scenario, the current literature is limited: m...
BACKGROUND: Three-level data arising from repeated measures on individuals who are clustered within ...