Financial returns are often modelled as autoregressive time series with random disturbances having conditional heteroscedastic variances, especially with GARCH type processes. GARCH processes have been intensely studying in financial and econometric literature as risk models of many financial time series. Analyzing two data sets of stock prices we try to fit AR(1) processes with GARCH or EGARCH errors to the log returns. Moreover, hyperbolic or generalized error distributions occur to be good models of white noise distributions.Peer Reviewe
The effect of misspecification of correct sampling probability distribution of Generalized Autoregre...
This paper studies the performance of GARCH model and its modifications, using the rate of returns f...
The Generalized Autoregressive Conditional Heteroskedasticity (GARCH) model has been widely used in ...
Financial returns are often modelled as autoregressive time series with random disturbances having c...
Financial returns are often modelled as autoregressive time series with random disturbances having c...
The paper examines the association between financial market volatility and actual economic incidents...
Purpose – Financial returns are often modeled as stationary time series with innovations having hete...
In this paper a new GARCH–M type model, denoted the GARCH-AR, is proposed. In particular, it is show...
AbstractFinancial returns are often modeled as autoregressive time series with innovations having co...
The GARCH (p, q) model is a very interesting stochastic process with widespread applications and a c...
ARCH and GARCH models have become important tools in the analysis of time series data, particularly ...
The authors propose a simplified multivariate GARCH (generalized autoregressive conditional heterosc...
Generalized autoregressive conditional heteroskedastic (GARCH) model is a standard approach to study...
Abstract: This study compares the fit and forecast performance of a selected group of parametric Gen...
This paper compares the ability of GARCH and ARSV models to represent adequately the main empirical ...
The effect of misspecification of correct sampling probability distribution of Generalized Autoregre...
This paper studies the performance of GARCH model and its modifications, using the rate of returns f...
The Generalized Autoregressive Conditional Heteroskedasticity (GARCH) model has been widely used in ...
Financial returns are often modelled as autoregressive time series with random disturbances having c...
Financial returns are often modelled as autoregressive time series with random disturbances having c...
The paper examines the association between financial market volatility and actual economic incidents...
Purpose – Financial returns are often modeled as stationary time series with innovations having hete...
In this paper a new GARCH–M type model, denoted the GARCH-AR, is proposed. In particular, it is show...
AbstractFinancial returns are often modeled as autoregressive time series with innovations having co...
The GARCH (p, q) model is a very interesting stochastic process with widespread applications and a c...
ARCH and GARCH models have become important tools in the analysis of time series data, particularly ...
The authors propose a simplified multivariate GARCH (generalized autoregressive conditional heterosc...
Generalized autoregressive conditional heteroskedastic (GARCH) model is a standard approach to study...
Abstract: This study compares the fit and forecast performance of a selected group of parametric Gen...
This paper compares the ability of GARCH and ARSV models to represent adequately the main empirical ...
The effect of misspecification of correct sampling probability distribution of Generalized Autoregre...
This paper studies the performance of GARCH model and its modifications, using the rate of returns f...
The Generalized Autoregressive Conditional Heteroskedasticity (GARCH) model has been widely used in ...