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This article proposed a partial cross-classified random effects model (partial CCREM) for the analysis of data that contain both partly nested and partly cross-classified individuals. An empirical example was used to illustrate the proposed model. A simulation study was conducted to compare the proposed model with two other approaches that treat the partially cross-classified data as either fully nested or fully cross-classified. Results showed that the partial CCREM demonstrated desirable statistical properties in terms of bias and variance of the parameter estimates. Both the fully nested model and the fully cross-classified model suffered from biased estimates of variance components and standard errors of fixed effects.
Kevin James Cappaert, University of Wisconsin - Milwaukee
Jaime Leigh Peterson, University of Iowa
Wen Luo, University of Wisconsin - Milwaukee