In this paper, we apply the ARFIMA-GARCH model to the realized volatility and the continuous sample path variations constructed from high-frequency Nikkei 225 data. While the homoskedastic ARFIMA model performs excellently in predicting the Nikkei 225 realized volatility time series and their square-root and log transformations, the residuals of the model suggest presence of strong conditional heteroskedasticity similar to the finding of Corsi et al. (2007) for the realized S&P 500 futures volatility. An ARFIMA model augmented by a GARCH(1,1) specification for the error term largely captures this and substantially improves the fit to the data. In a multi-day forecasting setting, we also find some evidence of predictable time variation in th...
Financial support from the Ministry of Education, Culture, Sports, Science and Technology of the Jap...
Properties of three well-known and frequently applied first-order models for modelling and forecasti...
This paper applies the Generalized Autoregressive Conditional Heteroscedasticity (GARCH) models to t...
In this paper, we apply the ARFIMA-GARCH model to the realized volatility and the continuous sample ...
This paper analyses whether realized generalized autoregressive conditional heteroscedasticity (GARC...
Measuring and forecasting volatility of asset returns is very important for asset trading and risk m...
August 30, 2012This paper analyses whether the realized generalized autoregressive conditional heter...
Forecasting volatility with precision in financial market is very important. This paper examines the...
Recent literature provides mixed empirical evidence with respect to the forecasting performance of A...
Consulta en la Biblioteca ETSI Industriales (7805)[eng] The volatility has become an economic phenom...
The forecasting of the volatility of asset returns is a prerequisite for many risk management tasks ...
textabstractFor forecasting volatility of futures returns, the paper proposes an indirect method ba...
The sum of squared intraday returns provides an unbiased and almost error-free measure of ex-post vo...
Fractionally integrated autoregressive moving average (ARFIMA) and Heterogeneou Autoregressive (HAR)...
This article proposes an indirect method for forecasting the volatility of futures returns, based on...
Financial support from the Ministry of Education, Culture, Sports, Science and Technology of the Jap...
Properties of three well-known and frequently applied first-order models for modelling and forecasti...
This paper applies the Generalized Autoregressive Conditional Heteroscedasticity (GARCH) models to t...
In this paper, we apply the ARFIMA-GARCH model to the realized volatility and the continuous sample ...
This paper analyses whether realized generalized autoregressive conditional heteroscedasticity (GARC...
Measuring and forecasting volatility of asset returns is very important for asset trading and risk m...
August 30, 2012This paper analyses whether the realized generalized autoregressive conditional heter...
Forecasting volatility with precision in financial market is very important. This paper examines the...
Recent literature provides mixed empirical evidence with respect to the forecasting performance of A...
Consulta en la Biblioteca ETSI Industriales (7805)[eng] The volatility has become an economic phenom...
The forecasting of the volatility of asset returns is a prerequisite for many risk management tasks ...
textabstractFor forecasting volatility of futures returns, the paper proposes an indirect method ba...
The sum of squared intraday returns provides an unbiased and almost error-free measure of ex-post vo...
Fractionally integrated autoregressive moving average (ARFIMA) and Heterogeneou Autoregressive (HAR)...
This article proposes an indirect method for forecasting the volatility of futures returns, based on...
Financial support from the Ministry of Education, Culture, Sports, Science and Technology of the Jap...
Properties of three well-known and frequently applied first-order models for modelling and forecasti...
This paper applies the Generalized Autoregressive Conditional Heteroscedasticity (GARCH) models to t...