Artículos de revistas
Framework for Skew-Probit Links in Binary Regression
Fecha
2010Registro en:
COMMUNICATIONS IN STATISTICS-THEORY AND METHODS, v.39, n.4, p.678-697, 2010
0361-0926
10.1080/03610920902783849
Autor
BAZAN, Jorge L.
BOLFARINE, Heleno
BRANCO, Marcia D.
Institución
Resumen
We review several asymmetrical links for binary regression models and present a unified approach for two skew-probit links proposed in the literature. Moreover, under skew-probit link, conditions for the existence of the ML estimators and the posterior distribution under improper priors are established. The framework proposed here considers two sets of latent variables which are helpful to implement the Bayesian MCMC approach. A simulation study to criteria for models comparison is conducted and two applications are made. Using different Bayesian criteria we show that, for these data sets, the skew-probit links are better than alternative links proposed in the literature.