This paper studies the estimation of a semi-strong GARCH(l, 1) model when it does not have a stationary solution, where semi-strong means that we do not require the errors to be independent over time. We establish necessary and sufficient conditions for a semi-strong GARCH(l, 1) process to have a unique stationary solution. For the nonstationary semi-strong GARCH(l, 1) model, we prove that a local minimizer of the least absolute deviations (LAD) criterion converges at the rate root n to a normal distribution under very mild moment conditions for the errors. Furthermore, when the distributions of the errors are in the domain of attraction of a stable law with the exponent kappa is an element of (1, 2), it is shown that the asymptotic distrib...
ARCH and GARCH models directly address the dependency of conditional second moments, and have proved...
ARCH and GARCH models directly address the dependency of conditional second moments, and have proved...
This paper investigates the sampling behavior of the quasi-maximum likelihood estimator of the Gauss...
This paper studies the estimation of a semi-strong GARCH(1,1) model when it does not have a stationa...
This paper studies the estimation of a semi-strong GARCH(1,1) model when it does not have a stationa...
This paper studies the estimation of a semi-strong GARCH(1,1) model when it does not have a stationa...
This paper studies the estimation of a semi-strong GARCH(1,1) model when it does not have a stationa...
This paper studies the estimation of a semi-strong GARCH(1,1) model when it does not have a stationa...
This paper studies the estimation of a semi-strong GARCH(1,1) model when it does not have a stationa...
Consider a class of power transformed and threshold GARCH(p,q) (PTTGRACH(p,q)) model, which is a nat...
GARCH (1,1) models are widely used for modelling processes with time varying volatility. These inc...
GARCH (1,1) models are widely used for modelling processes with time varying volatility. These inc...
ARCH and GARCH models directly address the dependency of conditional second moments, and have proved...
ARCH and GARCH models directly address the dependency of conditional second moments, and have proved...
GARCH (1,1) models are widely used for modelling processes with time varying volatility. These inc...
ARCH and GARCH models directly address the dependency of conditional second moments, and have proved...
ARCH and GARCH models directly address the dependency of conditional second moments, and have proved...
This paper investigates the sampling behavior of the quasi-maximum likelihood estimator of the Gauss...
This paper studies the estimation of a semi-strong GARCH(1,1) model when it does not have a stationa...
This paper studies the estimation of a semi-strong GARCH(1,1) model when it does not have a stationa...
This paper studies the estimation of a semi-strong GARCH(1,1) model when it does not have a stationa...
This paper studies the estimation of a semi-strong GARCH(1,1) model when it does not have a stationa...
This paper studies the estimation of a semi-strong GARCH(1,1) model when it does not have a stationa...
This paper studies the estimation of a semi-strong GARCH(1,1) model when it does not have a stationa...
Consider a class of power transformed and threshold GARCH(p,q) (PTTGRACH(p,q)) model, which is a nat...
GARCH (1,1) models are widely used for modelling processes with time varying volatility. These inc...
GARCH (1,1) models are widely used for modelling processes with time varying volatility. These inc...
ARCH and GARCH models directly address the dependency of conditional second moments, and have proved...
ARCH and GARCH models directly address the dependency of conditional second moments, and have proved...
GARCH (1,1) models are widely used for modelling processes with time varying volatility. These inc...
ARCH and GARCH models directly address the dependency of conditional second moments, and have proved...
ARCH and GARCH models directly address the dependency of conditional second moments, and have proved...
This paper investigates the sampling behavior of the quasi-maximum likelihood estimator of the Gauss...