Abstract
The paper establishes the local asymptotic normality property for general conditionally heteroskedastic time series models of multiplicative form,$\epsilon _t=\sigma _t(\boldsymbol {\theta }_0)\eta _t$, where the volatility$\sigma _t(\boldsymbol {\theta }_0)$is a parametric function of$\{\epsilon _{s}, s< t\}$, and$(\eta _t)$is a sequence of i.i.d. random variables with common density$f_{\boldsymbol {\theta }_0}$. In contrast with earlier results, the finite dimensional parameter$\boldsymbol {\theta }_0$enters in both the volatility and the density specifications. To deal with nondifferentiable functions, we introduce a conditional notion of the familiar quadratic mean differentiability condition which takes into account parameter variation in both the volatility and the errors density. Our results are illustrated on two particular models: the APARCH with asymmetric Student-tdistribution, and the Beta-t-GARCH model, and are extended to handle a conditional mean.
Publisher
Cambridge University Press (CUP)
Subject
Economics and Econometrics,Social Sciences (miscellaneous)
Reference29 articles.
1. Local asymptotic normality of multivariate ARMA processes with a linear trend;Garel;Annals of the Institute of Statistical Mathematics,1995
2. Local asymptotic normality for regression models with long-memory disturbance;Hallin;Annals of Statistics,1999
3. Maximum likelihood estimation of pure GARCH and ARMA-GARCH processes
4. Asymptotic Statistics
5. Pseudo-maximum likelihood estimation of ARCH(1) models;Robinson;Annals of Statistic,2006