The test for cluster bias is a test of measurement invariance across clusters in 2-level data. This article examines the true positive rates (empirical power) and false positive rates of the test for cluster bias using the likelihood ratio test (LRT) and the Wald test with ordinal data. A simulation study indicates that the scaled version of the LRT that accounts for nonnormality of the data gives untrustworthy results, whereas the unscaled LRT and the Wald test have acceptable false positive rates and perform well in terms of empirical power rate if the amount of cluster bias is large. The test for cluster bias is illustrated with data from research on teacher-student relations
Thesis (Master's)--University of Washington, 2022The purpose of the current study is to highlight an...
In statistical analysis, ignoring the clustered structure of data can lead to invalid results and st...
Recent advances in multilevel modeling software have made it easier to investigate potential bias in...
The test for cluster bias is a test of measurement invariance across clusters in 2-level data. This ...
We present a test for cluster bias, which can be used to detect violations of measurement invariance...
This article presents a testing procedure for comparing ordinal data distributions which helps the i...
The literature on cluster analysis has a long and rich history in several different fields. In this ...
The literature on cluster analysis has a long and rich history in several different fields. In this ...
This thesis presents a comparison of statistical methodologies for cluster verification on ordinal r...
Measurement bias can be detected using structural equation modeling (SEM), by testing measurement in...
A mixture model for ordinal data modelling (denoted CUB) has been recently proposed in literature. S...
Measurement bias can be detected using structural equation modeling (SEM), by testing measurement in...
Likert scaled data, which are frequently collected In studies of interaction in virtual environments...
<p>a) shows rates when the proportion of studies reporting in the clusters is 40%, 50%, and 60%. b) ...
The test for item level cluster bias examines the improvement in model fit that results from freeing...
Thesis (Master's)--University of Washington, 2022The purpose of the current study is to highlight an...
In statistical analysis, ignoring the clustered structure of data can lead to invalid results and st...
Recent advances in multilevel modeling software have made it easier to investigate potential bias in...
The test for cluster bias is a test of measurement invariance across clusters in 2-level data. This ...
We present a test for cluster bias, which can be used to detect violations of measurement invariance...
This article presents a testing procedure for comparing ordinal data distributions which helps the i...
The literature on cluster analysis has a long and rich history in several different fields. In this ...
The literature on cluster analysis has a long and rich history in several different fields. In this ...
This thesis presents a comparison of statistical methodologies for cluster verification on ordinal r...
Measurement bias can be detected using structural equation modeling (SEM), by testing measurement in...
A mixture model for ordinal data modelling (denoted CUB) has been recently proposed in literature. S...
Measurement bias can be detected using structural equation modeling (SEM), by testing measurement in...
Likert scaled data, which are frequently collected In studies of interaction in virtual environments...
<p>a) shows rates when the proportion of studies reporting in the clusters is 40%, 50%, and 60%. b) ...
The test for item level cluster bias examines the improvement in model fit that results from freeing...
Thesis (Master's)--University of Washington, 2022The purpose of the current study is to highlight an...
In statistical analysis, ignoring the clustered structure of data can lead to invalid results and st...
Recent advances in multilevel modeling software have made it easier to investigate potential bias in...