Ayuda
Ir al contenido

Dialnet


Resumen de The score of conditionally heteroskedastic dynamic regression models with student t innovations, an lm test for multivariate normality

Gabriele Fiorentini, Enrique Sentana Iváñez, Giorgio Calzolari

  • We provide numerically reliable analytical expressions for the score of conditionally heteroskedastic dynamic regression models when the conditional distribution is multivariate $t$. We also derive one-sided and 2-sided LM tests for multivariate normality versus multivariate $t$ based on the first two moments of the (squared) norm of the standardised innovations evaluated at the Gaussian quasi-ML estimators of the conditional mean and variance parameters. We reinterpret them as specification tests for multivariate excess kurtosis, and show that they have power against leptokurtic alternatives. Finally, we analyse UK stock returns, and confirm that their conditional distribution has fat tails.


Fundación Dialnet

Dialnet Plus

  • Más información sobre Dialnet Plus