The Multilevel Approach to Repeated Measures for Complete and Incomplete Data |
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Authors: | Maas Cora J. M. Snijders Tom A. B. |
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Affiliation: | (1) Department of Methodology and Statistics, University of Utrecht, The Netherlands;(2) Department of Statistics and Measurement Theory, University of Groningen, The Netherlands |
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Abstract: | Repeated measurements often are analyzed by multivariate analysis of variance (MANOVA). An alternative approach is provided by multilevel analysis, also called the hierarchical linear model (HLM), which makes use of random coefficient models. This paper is a tutorial which indicates that the HLM can be specified in many different ways, corresponding to different sets of assumptions about the covariance matrix of the repeated measurements. The possible assumptions range from the very restrictive compound symmetry model to the unrestricted multivariate model. Thus, the HLM can be used to steer a useful middle road between the two traditional methods for analyzing repeated measurements. Another important advantage of the multilevel approach to analyzing repeated measures is the fact that it can be easily used also if the data are incomplete. Thus it provides a way to achieve a fully multivariate analysis of repeated measures with incomplete data. This revised version was published online in June 2006 with corrections to the Cover Date. |
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Keywords: | MANOVA incomplete data missing at random hierarchical linear model Hotelling's test Wald test compound symmetry model |
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