Many econometric time series data sets, such as log returns of stocks, exhibit evidence of the so called stylized facts. Namely it is generally observed that the data itself is uncorrelated with heavy tails, but the squared data has signicant autocorrelation. For such data sets, there appears to be little or no linear information in the past about the future values of the series. Thus the class of Autoregressive Integrated moving average models (ARIMA) are not appropriate. However, there does in general appear to be information in past values of the squared data about future values of the squared data. This allows for modeling of the conditional variance as a function of the observed past. One choice for a class of models able to incorporat...
Typical General Autoregressive Conditional Heteroskedastic (GARCH) processes involve normally-distri...
In this paper we performed an analysis in order the make an evidence of GARCH modeling on the perfor...
The Generalized Autoregressive Conditional Heteroskedasticity (GARCH) model has been widely used in ...
GARCH models have been commonly used to capture volatility dynamics in financial time series. A key ...
One of the challenging aspects of conditional heteroskedasticity series is that if we were to plot t...
GARCH models are widely used in financial econometrics. However, we show by mean of a simple simulat...
Generalized Auto-regressive Conditional Heteroskedastic (GARCH) models with fixed parameters are typ...
We develop a uniform test for detecting and dating the integrated or mildly explosive behaviour of a...
One of the essential features of financial time series data is volatility. It is often the case that...
The GARCH model and the Stochastic Volatility [SV] model are competing butnon-nested models to descr...
ARCH and GARCH models have become important tools in the analysis of time series data, particularly ...
This paper investigates the implications of time-varying betas in factor models for stock returns. I...
The GARCH model is widely used to forecast volatility for economic and financial Data. There are, ho...
The limit theory of a change-point process which is based on the Manhattan distance of the sample au...
This paper gives a tour through the empirical analysis of univariate GARCH models for financial time...
Typical General Autoregressive Conditional Heteroskedastic (GARCH) processes involve normally-distri...
In this paper we performed an analysis in order the make an evidence of GARCH modeling on the perfor...
The Generalized Autoregressive Conditional Heteroskedasticity (GARCH) model has been widely used in ...
GARCH models have been commonly used to capture volatility dynamics in financial time series. A key ...
One of the challenging aspects of conditional heteroskedasticity series is that if we were to plot t...
GARCH models are widely used in financial econometrics. However, we show by mean of a simple simulat...
Generalized Auto-regressive Conditional Heteroskedastic (GARCH) models with fixed parameters are typ...
We develop a uniform test for detecting and dating the integrated or mildly explosive behaviour of a...
One of the essential features of financial time series data is volatility. It is often the case that...
The GARCH model and the Stochastic Volatility [SV] model are competing butnon-nested models to descr...
ARCH and GARCH models have become important tools in the analysis of time series data, particularly ...
This paper investigates the implications of time-varying betas in factor models for stock returns. I...
The GARCH model is widely used to forecast volatility for economic and financial Data. There are, ho...
The limit theory of a change-point process which is based on the Manhattan distance of the sample au...
This paper gives a tour through the empirical analysis of univariate GARCH models for financial time...
Typical General Autoregressive Conditional Heteroskedastic (GARCH) processes involve normally-distri...
In this paper we performed an analysis in order the make an evidence of GARCH modeling on the perfor...
The Generalized Autoregressive Conditional Heteroskedasticity (GARCH) model has been widely used in ...