Title of article
Missing data techniques for multilevel data: implications of model misspecification
Author/Authors
Anne C. Black، نويسنده , , Ofer Harel&D. Betsy McCoach، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2011
Pages
21
From page
1845
To page
1865
Abstract
When modeling multilevel data, it is important to accurately represent the interdependence of observations
within clusters. Ignoring data clustering may result in parameter misestimation. However, it is not well
established to what degree parameter estimates are affected by model misspecification when applying
missing data techniques (MDTs) to incomplete multilevel data. We compare the performance of three
MDTs with incomplete hierarchical data. We consider the impact of imputation model misspecification
on the quality of parameter estimates by employing multiple imputation under assumptions of a normal
model (MI/NM) with two-level cross-sectional data when values are missing at random on the dependent
variable at rates of 10%, 30%, and 50%. Five criteria are used to compare estimates from MI/NM to
estimates from MI assuming a linear mixed model (MI/LMM) and maximum likelihood estimation to
the same incomplete data sets. With 10% missing data (MD), techniques performed similarly for fixedeffects
estimates, but variance components were biased with MI/NM. Effects of model misspecification
worsened at higher rates of MD, with the hierarchical structure of the data markedly underrepresented
by biased variance component estimates. MI/LMM and maximum likelihood provided generally accurate
and unbiased parameter estimates but performance was negatively affected by increased rates of MD.
Keywords
maximum likelihood , Missing data , Multiple imputation , multilevel data , Monte Carlo
Journal title
JOURNAL OF APPLIED STATISTICS
Serial Year
2011
Journal title
JOURNAL OF APPLIED STATISTICS
Record number
712640
Link To Document