Multilevel models with multivariate mixed response types
<jats:p> We build upon the existing literature to formulate a class of models for multivariate mixtures of Gaussian, ordered or unordered categorical responses and continuous distributions that are not Gaussian, each of which can be defined at any level of a multilevel data hierarchy. We describe a Markov chain Monte Carlo algorithm for fitting such models. We show how this unifies a number of disparate problems, including partially observed data and missing data in generalized linear modelling. The two-level model is considered in detail with worked examples of applications to a prediction problem and to multiple imputation for missing data. We conclude with a discussion outlining possible extensions and connections in the literature. Software for estimating the models is freely available. </jats:p>
Item Type | Article |
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Keywords | Box-Cox transformation, data augmentation, data coarsening, latent, Gaussian model, maximum indicant model, MCMC, missing data, mixed, response models, multilevel, multiple imputation, multivariate, normalising transformations, partially known values, prediction, prior-informed imputation, probit model, multiple imputation, data augmentation, variable models, discrete |
ISI | 272808600001 |