AbstractThe squares of a GARCH(p,q) process satisfy an ARMA equation with white noise innovations and parameters which are derived from the GARCH model. Moreover, the noise sequence of this ARMA process constitutes a strongly mixing stationary process with geometric rate. These properties suggest to apply classical estimation theory for stationary ARMA processes. We focus on the Whittle estimator for the parameters of the resulting ARMA model. Giraitis and Robinson (2000) show in this context that the Whittle estimator is strongly consistent and asymptotically normal provided the process has finite 8th moment marginal distribution.We focus on the GARCH(1,1) case when the 8th moment is infinite. This case corresponds to various real-life log...
This paper studies the estimation of a semi-strong GARCH(l, 1) model when it does not have a station...
This paper studies the estimation of a semi-strong GARCH(1,1) model when it does not have a stationa...
The paper considers a volatility model that includes a persistent, integrated or nearly integrated, ...
AbstractThe squares of a GARCH(p,q) process satisfy an ARMA equation with white noise innovations an...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider two estimation procedures, Gauss-Newton and M-estimation, for the parameters of an ARMA ...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
In this paper we study high moment partial sum processes based on residuals of a stationary ARMA mod...
Purpose – Financial returns are often modeled as stationary time series with innovations having hete...
This paper studies the estimation of a semi-strong GARCH(1,1) model when it does not have a stationa...
International audienceAn integer-valued analogue of the classical GARCH$(p,q)$ model with Poisson de...
This paper studies the estimation of a semi-strong GARCH(l, 1) model when it does not have a station...
This paper studies the estimation of a semi-strong GARCH(1,1) model when it does not have a stationa...
The paper considers a volatility model that includes a persistent, integrated or nearly integrated, ...
AbstractThe squares of a GARCH(p,q) process satisfy an ARMA equation with white noise innovations an...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider two estimation procedures, Gauss-Newton and M-estimation, for the parameters of an ARMA ...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
In this paper we study high moment partial sum processes based on residuals of a stationary ARMA mod...
Purpose – Financial returns are often modeled as stationary time series with innovations having hete...
This paper studies the estimation of a semi-strong GARCH(1,1) model when it does not have a stationa...
International audienceAn integer-valued analogue of the classical GARCH$(p,q)$ model with Poisson de...
This paper studies the estimation of a semi-strong GARCH(l, 1) model when it does not have a station...
This paper studies the estimation of a semi-strong GARCH(1,1) model when it does not have a stationa...
The paper considers a volatility model that includes a persistent, integrated or nearly integrated, ...