Title of article :
A non-iterative sampling Bayesian method for linear mixed models with normal independent distributions
Author/Authors :
Victor H. Lachos، نويسنده , , Celso R.B. Cabral&Carlos A. Abanto-Valle، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
In this paper, we utilize normal/independent (NI) distributions as a tool for robust modeling of linear mixed
models (LMM) under a Bayesian paradigm. The purpose is to develop a non-iterative sampling method to
obtain i.i.d. samples approximately from the observed posterior distribution by combining the inverse
Bayes formulae, sampling/importance resampling and posterior mode estimates from the expectation
maximization algorithm to LMMs with NI distributions, as suggested by Tan et al. [33]. The proposed
algorithm provides a novel alternative to perfect sampling and eliminates the convergence problems of
Markov chain Monte Carlo methods. In order to examine the robust aspects of the NI class, against
outlying and influential observations, we present a Bayesian case deletion influence diagnostics based on
the Kullback–Leibler divergence. Further, some discussions on model selection criteria are given. The
new methodologies are exemplified through a real data set, illustrating the usefulness of the proposed
methodology.
Keywords :
MCMC , Inverse Bayes formulae , normal/independent distributions , sampling/importance resampling , Linear mixed models , Gibbs algorithms
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS