Cross-classified random effects models (CCREMs) are used in the analyses of
cross-sectional and longitudinal multilevel data that are not strictly hierarchical. Because
of the complexity of this technique, many researchers simply ignore the cross-classified
structures of their data and use hierarchical linear models. The study simulated crosssectional
and longitudinal multilevel data with cross-classified structures and examined
the impact of misspecifying CCREMs on parameter and standard error estimates in these
data.
The dissertation consists of two studies. Study One examines cross-sectional
multilevel data and Study Two examines longitudinal multilevel data. In Study One,
three-level cross-classified data were generated. Two random factors were crossed at
either the top level or the intermediate level. It was found that ignoring a crossed random
factor causes the variance of the remaining crossed factor and the adjacent levels to be
overestimated. The fixed effects themselves are unbiased; however, the standard errors
associated with the fixed effects are biased. When the ignored crossed factor is at the top level, the standard error of the intercept is underestimated whereas the standard error of
the regression coefficients associated with the covariate of the intermediate level and the
remaining crossed factor are overestimated. When the ignored crossed factor is at the
intermediate level, only the standard error of the regression coefficients associated with
the covariate of the bottom level is overestimated.
In Study Two, longitudinal multilevel data were generated mirroring studies in
which students are measured repeatedly and change schools over time. It was found that
when the school level is modeled hierarchically above the student level rather than as a
crossed factor, part of the variance at the school level is added to the student level,
causing underestimation of the school-level variance and overestimation of the studentlevel
variance and covariance. The standard errors of the intercept and the regression
coefficients associated with the school-level predictors are underestimated, which may
cause spurious significance for results.
The findings of the dissertation enhanced our understanding of the functioning of
CCREMs in both cross-sectional and longitudinal multilevel data. The findings can help
researchers to determine when CCREMs should be used and to interpret their results
with caution when they misspecify CCREMs.
Identifer | oai:union.ndltd.org:tamu.edu/oai:repository.tamu.edu:1969.1/ETD-TAMU-1507 |
Date | 15 May 2009 |
Creators | Luo, Wen |
Contributors | Kwok, Oiman, Willson, Victor |
Source Sets | Texas A and M University |
Language | en_US |
Detected Language | English |
Type | Book, Thesis, Electronic Dissertation, text |
Format | electronic, application/pdf, born digital |
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