Bayesian inference for skew-normal linear mixed models

Arellano-Valle, RB; Bolfarine, H; Lachos, VH

Abstract

Linear mixed models (LMM) are frequently used to analyze repeated measures data, because they are more flexible to modelling the correlation within-subject, often present in this type of data. The most popular LMM for continuous responses assumes that both the random effects and the within-subjects errors are normally distributed, which can be an unrealistic assumption, obscuring important features of the variations present within and among the units (or groups). This work presents skew-normal liner mixed models (SNLMM) that relax the normality assumption by using a multivariate skew-normal distribution, which includes the normal ones as a special case and provides robust estimation in mixed models. The MCMC scheme is derived and the results of a simulation study are provided demonstrating that standard information criteria may be used to detect departures from normality. The procedures are illustrated using a real data set from a cholesterol study.

Más información

Título según WOS: Bayesian inference for skew-normal linear mixed models
Título según SCOPUS: Bayesian inference for skew-normal linear mixed models
Título de la Revista: JOURNAL OF APPLIED STATISTICS
Volumen: 34
Número: 6
Editorial: TAYLOR & FRANCIS LTD
Fecha de publicación: 2007
Página de inicio: 663
Página final: 682
Idioma: English
URL: http://www.tandfonline.com/doi/abs/10.1080/02664760701236905
DOI:

10.1080/02664760701236905

Notas: ISI, SCOPUS