Artículos de revistas
Improved score tests in symmetric linear regression models
Fecha
2008Registro en:
COMMUNICATIONS IN STATISTICS-THEORY AND METHODS, v.37, n.2, p.261-276, 2008
0361-0926
10.1080/03610920701649050
Autor
URIBE-OPAZO, Miguel A.
FERRARI, Silvia L. P.
CORDEIRO, Gauss M.
Institución
Resumen
The class of symmetric linear regression models has the normal linear regression model as a special case and includes several models that assume that the errors follow a symmetric distribution with longer-than-normal tails. An important member of this class is the t linear regression model, which is commonly used as an alternative to the usual normal regression model when the data contain extreme or outlying observations. In this article, we develop second-order asymptotic theory for score tests in this class of models. We obtain Bartlett-corrected score statistics for testing hypotheses on the regression and the dispersion parameters. The corrected statistics have chi-squared distributions with errors of order O(n(-3/2)), n being the sample size. The corrections represent an improvement over the corresponding original Rao`s score statistics, which are chi-squared distributed up to errors of order O(n(-1)). Simulation results show that the corrected score tests perform much better than their uncorrected counterparts in samples of small or moderate size.