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Bayesian inference in a heteroscedastic replicated measurement error model using heavy-tailed distributions

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ABSTRACT We introduce a multivariate heteroscedastic measurement error model for replications under scale mixtures of normal distribution. The model can provide a robust analysis and can be viewed as a… Click to show full abstract

ABSTRACT We introduce a multivariate heteroscedastic measurement error model for replications under scale mixtures of normal distribution. The model can provide a robust analysis and can be viewed as a generalization of multiple linear regression from both model structure and distribution assumption. An efficient method based on Markov Chain Monte Carlo is developed for parameter estimation. The deviance information criterion and the conditional predictive ordinates are used as model selection criteria. Simulation studies show robust inference behaviours of the model against both misspecification of distributions and outliers. We work out an illustrative example with a real data set on measurements of plant root decomposition.

Keywords: error model; measurement error; model; bayesian inference

Journal Title: Journal of Statistical Computation and Simulation
Year Published: 2017

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