This paper evaluates the forecasting performance of a continuous stochastic volatility model with two factors of volatility (SV2F) and compares it to those of GARCH and ARFIMA models. The empirical results show that the volatility forecasting ability of the SV2F model is better than that of the GARCH and ARFIMA models, especially when volatility seems to change pattern. We use ex-post volatility as a proxy of the realized volatility obtained from intraday data and the forecasts from the SV2F are calculated using the reprojection technique proposed by Gallant and Tauchen (1998)
Abstract: The aim of this paper is to elucidate a need for the optimization of the two most used met...
We first propose a reduced-form model in discrete time for S&P 500 volatility showing that the forec...
Volatility plays a key role in asset and portfolio management and derivatives pricing. As such, accu...
This paper evaluates the forecasting performance of a continuous stochastic volatility model with tw...
This paper compares empirically the forecasting performance of a continuous time stochastic volatili...
In this paper we compare the forecast performance of continuous and discrete-time volatility models...
The forecasting ability of the most popular volatility forecasting models is examined and an alterna...
The increasing availability of financial market data at intraday frequencies has not only led to the...
The aim of this dissertation is to construct different intraday volatility forecasting techniques fo...
Measuring and forecasting volatility of asset returns is very important for asset trading and risk m...
We first propose a reduced-form model in discrete time for S&P 500 volatility showing that the forec...
Volatility has been one of the most active and successful areas of research in time series econometr...
The increasing availability of financial market data at intraday frequencies has not only led to the...
We provide a general framework for integration of high-frequency intraday data into the measurement,...
The forecasting of the volatility of asset returns is a prerequisite for many risk management tasks ...
Abstract: The aim of this paper is to elucidate a need for the optimization of the two most used met...
We first propose a reduced-form model in discrete time for S&P 500 volatility showing that the forec...
Volatility plays a key role in asset and portfolio management and derivatives pricing. As such, accu...
This paper evaluates the forecasting performance of a continuous stochastic volatility model with tw...
This paper compares empirically the forecasting performance of a continuous time stochastic volatili...
In this paper we compare the forecast performance of continuous and discrete-time volatility models...
The forecasting ability of the most popular volatility forecasting models is examined and an alterna...
The increasing availability of financial market data at intraday frequencies has not only led to the...
The aim of this dissertation is to construct different intraday volatility forecasting techniques fo...
Measuring and forecasting volatility of asset returns is very important for asset trading and risk m...
We first propose a reduced-form model in discrete time for S&P 500 volatility showing that the forec...
Volatility has been one of the most active and successful areas of research in time series econometr...
The increasing availability of financial market data at intraday frequencies has not only led to the...
We provide a general framework for integration of high-frequency intraday data into the measurement,...
The forecasting of the volatility of asset returns is a prerequisite for many risk management tasks ...
Abstract: The aim of this paper is to elucidate a need for the optimization of the two most used met...
We first propose a reduced-form model in discrete time for S&P 500 volatility showing that the forec...
Volatility plays a key role in asset and portfolio management and derivatives pricing. As such, accu...