Thesis (Ph.D. (Risk Analysis))--North-West University, Potchefstroom Campus, 2006.In classic GARCH models for financial returns the innovations are usually assumed to be normally distributed. However, it is generally accepted that a non-normal innovation distribution is needed in order to account for the heavier tails often encountered in financial returns. Since the structure of the normal inverse Gaussian (NIG) distribution makes it an attractive alternative innovation distribution for this purpose, we extend the normal GARCH model by assuming that the innovations are NIG-distributed. We use the normal variance mixture interpretation of the NIG distribution to show that a NIG innovation may be interpreted as a normal innovation coupled w...
International audienceIn this paper, we discuss the class of Bilinear GATRCH (BL-GARCH) models which...
This paper proposes a new parametric volatility model that introduces serially dependent innovations...
In this paper, we perform Bayesian inference and prediction for a GARCH model where the innovations ...
Innovation distributions play significant role in determining the fitness as well as forecasting per...
This paper provides an overview of the contributions by prof JH Venter to financial risk and volatil...
We discuss the Normal inverse Gaussian (NIG) distribution in modeling volatility in the financial ma...
[[abstract]]The paper constructs a GARCH process with time-changed L?vy innovations from the economi...
Recently, great strides have been made in predicting volatility in the financial market. However, th...
The normal inverse Gaussian (NIG) process is a Lévy process with no Brownian component and NIG-distr...
This essay investigates how realized variance affects the GARCH-models (GARCH, EGARCH, GJRGARCH) whe...
This thesis shows that the Norwegian stock market deviates significantly from what one might think ...
Here we present a general framework for a GARCH (1,1) type of process with innovations with a probab...
This paper examines the capabilities of the Normal Inverse Gaussian distribution as a model for stoc...
The Markov Regime-Switching Generalized autoregressive conditional heteroskedastic (MRS-GARCH) model...
In this work, we discuss the class of bilinear GARCH (BL-GARCH) models that are capable of capturing...
International audienceIn this paper, we discuss the class of Bilinear GATRCH (BL-GARCH) models which...
This paper proposes a new parametric volatility model that introduces serially dependent innovations...
In this paper, we perform Bayesian inference and prediction for a GARCH model where the innovations ...
Innovation distributions play significant role in determining the fitness as well as forecasting per...
This paper provides an overview of the contributions by prof JH Venter to financial risk and volatil...
We discuss the Normal inverse Gaussian (NIG) distribution in modeling volatility in the financial ma...
[[abstract]]The paper constructs a GARCH process with time-changed L?vy innovations from the economi...
Recently, great strides have been made in predicting volatility in the financial market. However, th...
The normal inverse Gaussian (NIG) process is a Lévy process with no Brownian component and NIG-distr...
This essay investigates how realized variance affects the GARCH-models (GARCH, EGARCH, GJRGARCH) whe...
This thesis shows that the Norwegian stock market deviates significantly from what one might think ...
Here we present a general framework for a GARCH (1,1) type of process with innovations with a probab...
This paper examines the capabilities of the Normal Inverse Gaussian distribution as a model for stoc...
The Markov Regime-Switching Generalized autoregressive conditional heteroskedastic (MRS-GARCH) model...
In this work, we discuss the class of bilinear GARCH (BL-GARCH) models that are capable of capturing...
International audienceIn this paper, we discuss the class of Bilinear GATRCH (BL-GARCH) models which...
This paper proposes a new parametric volatility model that introduces serially dependent innovations...
In this paper, we perform Bayesian inference and prediction for a GARCH model where the innovations ...