MLModelSelection - Model Selection in Multivariate Longitudinal Data Analysis
An efficient Gibbs sampling algorithm is developed for
Bayesian multivariate longitudinal data analysis with the focus
on selection of important elements in the generalized
autoregressive matrix. It provides posterior samples and
estimates of parameters. In addition, estimates of several
information criteria such as Akaike information criterion
(AIC), Bayesian information criterion (BIC), deviance
information criterion (DIC) and prediction accuracy such as the
marginal predictive likelihood (MPL) and the mean squared
prediction error (MSPE) are provided for model selection.