This paper proposes a new parametric volatility model that introduces serially dependent innovations in GARCH specifications. We first prove the asymptotic normality of the QML estimator in this setting, allowing for possible explosive and nonstationary behavior of the GARCH process. We show that this model can generate an alternative measure of risk premium relative to the GARCH-M. Finally, we provide evidence of the usefulness and advantages of our approach relative to competing volatility models through a Monte Carlo experiment and by an application to US treasury bill spot rates. In particular, we illustrate the consequences of dynamic misspecification and demonstrate that the new volatility model can improve upon the fit in-sample as w...
<div><p>This article investigates the asymptotic properties of the Gaussian quasi-maximum-likelihood...
Thesis (Ph.D. (Risk Analysis))--North-West University, Potchefstroom Campus, 2006.In classic GARCH m...
Many researchers use GARCH models to generate volatility forecasts. We show, however, that such fore...
In this paper a new GARCH–M type model, denoted the GARCH-AR, is proposed. In particular, it is show...
[[abstract]]The paper constructs a GARCH process with time-changed L?vy innovations from the economi...
AbstractRapid development of time series models addressing volatility has recently been reported in ...
ARCH/GARCH representations of financial series usually attempt to model the serial correlation struc...
The dynamic conditional score (DCS) models with variants of Student's t innovation are gaining popul...
In this paper we study a new class of nonlinear GARCH models. Special interest is devoted to models ...
This article considers modelling nonnormality in return with stable Paretian (SP) innovations in gen...
In this paper we develop an asymptotic theory for the parametric GARCH-in-Mean model. The asymptotic...
In this paper, we propose a natural extension of time-invariant coefficients threshold GARCH (TGARCH...
In this paper we study the behavior of GARCH(1,1) parameter estimates when data is generated by cert...
The paper considers a volatility model that includes a persistent, integrated or nearly integrated, ...
We discuss the Normal inverse Gaussian (NIG) distribution in modeling volatility in the financial ma...
<div><p>This article investigates the asymptotic properties of the Gaussian quasi-maximum-likelihood...
Thesis (Ph.D. (Risk Analysis))--North-West University, Potchefstroom Campus, 2006.In classic GARCH m...
Many researchers use GARCH models to generate volatility forecasts. We show, however, that such fore...
In this paper a new GARCH–M type model, denoted the GARCH-AR, is proposed. In particular, it is show...
[[abstract]]The paper constructs a GARCH process with time-changed L?vy innovations from the economi...
AbstractRapid development of time series models addressing volatility has recently been reported in ...
ARCH/GARCH representations of financial series usually attempt to model the serial correlation struc...
The dynamic conditional score (DCS) models with variants of Student's t innovation are gaining popul...
In this paper we study a new class of nonlinear GARCH models. Special interest is devoted to models ...
This article considers modelling nonnormality in return with stable Paretian (SP) innovations in gen...
In this paper we develop an asymptotic theory for the parametric GARCH-in-Mean model. The asymptotic...
In this paper, we propose a natural extension of time-invariant coefficients threshold GARCH (TGARCH...
In this paper we study the behavior of GARCH(1,1) parameter estimates when data is generated by cert...
The paper considers a volatility model that includes a persistent, integrated or nearly integrated, ...
We discuss the Normal inverse Gaussian (NIG) distribution in modeling volatility in the financial ma...
<div><p>This article investigates the asymptotic properties of the Gaussian quasi-maximum-likelihood...
Thesis (Ph.D. (Risk Analysis))--North-West University, Potchefstroom Campus, 2006.In classic GARCH m...
Many researchers use GARCH models to generate volatility forecasts. We show, however, that such fore...