artículo
Skew normal measurement error models
Fecha
2005Registro en:
10.1016/j.jmva.2004.11.002
0047-259X
WOS:000232730600003
Autor
Arellano Valle, RB
Ozan, S
Bolfarine, H
Lachos, VH
Institución
Resumen
In this paper we define a class of skew normal measurement error models, extending usual symmetric normal models in order to avoid data transformation. The likelihood function of the observed data is obtained, which can be maximized by using existing statistical software. Inference on the parameters of interest can be approached by using the observed information matrix, which can also be computed by using existing statistical software, such as the Ox program. Bayesian inference is also discussed for the family of asymmetric models in terms of invariance with respect to the symmetric normal distribution showing that early results obtained for the normal distribution also holds for the asymmetric family. Results of a simulation study and an analysis of a real data set analysis are provided. (c) 2004 Elsevier Inc. All rights reserved.