In this paper we compare the forecast performance of continuous and discrete-time volatility models. In discrete time, we consider more than ten GARCH-type models and an asymmetric autoregressive stochastic volatility model. In continuous-time, a stochastic volatility model with mean reversion, volatility feedback and leverage. We estimate each model by maximum likelihood and evaluate their ability to forecast the two scales realized volatility, a nonparametric estimate of volatility based on highfrequency data that minimizes the biases present in realized volatility caused by microstructure errors. We find that volatility forecasts based on continuous-time models may outperform those of GARCH-type discrete-time models so that, besi...
This paper reviews the exciting and rapidly expanding literature on realized volatility. After prese...
The daily volatility is typically unobserved but can be estimated using high frequent tick-by-tick d...
A volatility model must be able to forecast volatility. This is the central requirement in almost al...
In this paper we compare the forecast performance of continuous and discrete-time volatility models...
This paper compares empirically the forecasting performance of a continuous time stochastic volatili...
This paper evaluates the forecasting performance of a continuous stochastic volatility model with tw...
The forecasting ability of the most popular volatility forecasting models is examined and an alterna...
We first propose a reduced-form model in discrete time for S&P 500 volatility showing that the forec...
We first propose a reduced-form model in discrete time for S&P 500 volatility showing that the forec...
We build a discrete-time non-linear model for volatility forecasting purposes. This model belongs to...
The three main purposes of forecasting volatility are for risk management, for asset alloca-tion, an...
Volatility has been one of the most active and successful areas of research in time series econometr...
We propose a new family of easy-to-implement realized volatility based forecasting models. The model...
This article reviews the exciting and rapidly expanding literature on realized volatility. After pre...
We propose a new family of easy-to-implement realized volatility based forecasting models. The model...
This paper reviews the exciting and rapidly expanding literature on realized volatility. After prese...
The daily volatility is typically unobserved but can be estimated using high frequent tick-by-tick d...
A volatility model must be able to forecast volatility. This is the central requirement in almost al...
In this paper we compare the forecast performance of continuous and discrete-time volatility models...
This paper compares empirically the forecasting performance of a continuous time stochastic volatili...
This paper evaluates the forecasting performance of a continuous stochastic volatility model with tw...
The forecasting ability of the most popular volatility forecasting models is examined and an alterna...
We first propose a reduced-form model in discrete time for S&P 500 volatility showing that the forec...
We first propose a reduced-form model in discrete time for S&P 500 volatility showing that the forec...
We build a discrete-time non-linear model for volatility forecasting purposes. This model belongs to...
The three main purposes of forecasting volatility are for risk management, for asset alloca-tion, an...
Volatility has been one of the most active and successful areas of research in time series econometr...
We propose a new family of easy-to-implement realized volatility based forecasting models. The model...
This article reviews the exciting and rapidly expanding literature on realized volatility. After pre...
We propose a new family of easy-to-implement realized volatility based forecasting models. The model...
This paper reviews the exciting and rapidly expanding literature on realized volatility. After prese...
The daily volatility is typically unobserved but can be estimated using high frequent tick-by-tick d...
A volatility model must be able to forecast volatility. This is the central requirement in almost al...