A Simulation Comparison of Approximate Tests for Fixed Effects in Random Coefficients Growth Curve Models |
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Authors: | Julia Volaufova Lynn Roy Lamotte |
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Affiliation: | Biostatistics Program , LSUHSC School of Public Health , New Orleans , Louisiana , USA |
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Abstract: | Often, the response variables on sampling units are observed repeatedly over time. The sampling units may come from different populations, such as treatment groups. This setting is routinely modeled by a random coefficients growth curve model, and the techniques of general linear mixed models are applied to address the primary research aim. An alternative approach is to reduce each subject’s data to summary measures, such as within-subject averages or regression coefficients. One may then test for equality of means of the summary measures (or functions of them) among treatment groups. Here, we compare by simulation the performance characteristics of three approximate tests based on summary measures and one based on the full data, focusing mainly on accuracy of p-values. We find that performances of these procedures can be quite different for small samples in several different configurations of parameter values. The summary-measures approach performed at least as well as the full-data mixed models approach. |
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Keywords: | General linear mixed models Random coefficients Summary measures |
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