Efficient Analysis of Mixed Hierarchical and Cross-Classified Random Structures Using a Multilevel Model
- 1 December 1994
- journal article
- Published by American Educational Research Association (AERA) in Journal of Educational and Behavioral Statistics
- Vol. 19 (4) , 337-350
- https://doi.org/10.3102/10769986019004337
Abstract
An efficient and straightforward procedure is described for specifying and estimating parameters of general mixed models which contain both hierarchical and crossed random factors. This is done using a model formulated for purely hierarchically structured data and generalizes the results of Raudenbush (1993) . The exposition is for the continuous response linear model with natural extensions to generalized linear, nonlinear, and multivariate models.Keywords
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