Predicting the one-step-ahead volatility is of great importance in measuring and managing investment risk more accurately. Taking into consideration the main characteristics of the conditional volatility of asset returns, I estimate an asymmetric Autoregressive Conditional Heteroscedasticity (ARCH) model. The model is extended to also capture i) the skewness and excess kurtosis that the asset returns exhibit and ii) the fractional integration of the conditional variance. The model, which takes into consideration both the fractional integration of the conditional variance as well as the skewed and leptokurtic conditional distribution of innovations, produces the most accurate one-day-ahead volatility forecasts. The study recommends to portfo...
This article presents a comprehensive analysis of the relative ability of three information sets—dai...
Autoregressive Conditional Heteroscedasticity (ARCH) models have successfully been employed in order...
This dissertation consists of four papers that examine various aspects of the temporal patterns in ...
Predicting the one-step-ahead volatility is of great importance in measuring and managing investment...
Predicting the one-step-ahead volatility is of great importance in measuring and managing investment...
Predicting the one-step-ahead volatility is of great importance in measuring and managing investment...
Predicting the one-step-ahead volatility is of great importance in measuring and managing investment...
Volatility prediction is the key variable in forecasting the prices of options, value-at-risk and, i...
Volatility prediction is the key variable in forecasting the prices of options, value-at-risk and, i...
Volatility prediction is the key variable in forecasting the prices of options, value-at-risk and, i...
AbstractIn this article we evaluate the daily conditional volatility and h-step-ahead Value at Risk ...
AbstractIn this article we evaluate the daily conditional volatility and h-step-ahead Value at Risk ...
Implied volatility index of the S&P500 is considered as a dependent variable in a fractionally integ...
Autoregressive Conditional Heteroscedasticity (ARCH) models have successfully been employed in order...
Autoregressive Conditional Heteroscedasticity (ARCH) models have successfully been employed in order...
This article presents a comprehensive analysis of the relative ability of three information sets—dai...
Autoregressive Conditional Heteroscedasticity (ARCH) models have successfully been employed in order...
This dissertation consists of four papers that examine various aspects of the temporal patterns in ...
Predicting the one-step-ahead volatility is of great importance in measuring and managing investment...
Predicting the one-step-ahead volatility is of great importance in measuring and managing investment...
Predicting the one-step-ahead volatility is of great importance in measuring and managing investment...
Predicting the one-step-ahead volatility is of great importance in measuring and managing investment...
Volatility prediction is the key variable in forecasting the prices of options, value-at-risk and, i...
Volatility prediction is the key variable in forecasting the prices of options, value-at-risk and, i...
Volatility prediction is the key variable in forecasting the prices of options, value-at-risk and, i...
AbstractIn this article we evaluate the daily conditional volatility and h-step-ahead Value at Risk ...
AbstractIn this article we evaluate the daily conditional volatility and h-step-ahead Value at Risk ...
Implied volatility index of the S&P500 is considered as a dependent variable in a fractionally integ...
Autoregressive Conditional Heteroscedasticity (ARCH) models have successfully been employed in order...
Autoregressive Conditional Heteroscedasticity (ARCH) models have successfully been employed in order...
This article presents a comprehensive analysis of the relative ability of three information sets—dai...
Autoregressive Conditional Heteroscedasticity (ARCH) models have successfully been employed in order...
This dissertation consists of four papers that examine various aspects of the temporal patterns in ...