Affiliation:
1. University of Alabama at Birmingham
2. University of Michigan
Abstract
Bayesian analysis of hierarchically structured data with random intercept and heterogeneous within-group (Level-1) variance is presented. Inferences about all parameters, including the Level-1 variance and intercept for each group, are based on their marginal posterior distributions approximated via the Gibbs sampler Analysis of artificial data with varying degrees of heterogeneity and varying Level-2 sample sizes illustrates the likely benefits of using a Bayesian approach to model heterogeneity of variance (Bayes/Het). Results are compared to those based on now-standard restricted maximum likelihood with homogeneous Level-1 variance (RML/Hom). Bayes/Het provides sensible interval estimates for Level-1 variances and their heterogeneity, and, relatedly, for each group’s intercept. RML/Hom inferences about Level-2 regression coefficients appear surprisingly robust to heterogeneity, and conditions under which such robustness can be expected are discussed. Application is illustrated in a reanalysis of High School and Beyond data. It appears informative and practically feasible to obtain approximate marginal posterior distributions for all Level-1 and Level-2 parameters when analyzing large- or small-scale survey data. A key advantage of the Bayes approach is that inferences about any parameter appropriately reflect uncertainty about all remaining parameters.
Publisher
American Educational Research Association (AERA)
Subject
Social Sciences (miscellaneous),Education
Cited by
34 articles.
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