This paper uses the opening, high, low, and closing prices of five energy futures to estimate and model volatility based on the unbiased extreme value volatility estimator (the Add RS estimator). The statistical and distributional properties of the logarithm of the Add RS estimator support the use of the appropriate order linear long-memory Gaussian model (ARFIMA-Add RS model) to model the Add RS estimator. The out-of-sample evaluation analysis indicates that the volatility forecasts based on the ARFIMA-Add RS model provide superior forecasts of realised volatility of energy futures in relation to the alternative models from the GARCH family. This suggests that the ARFIMA-Add RS model can be a viable candidate for generating more accurate f...
This paper examines the portfolio optimization of energy futures by using the STARR ratio that can e...
In this paper, we apply the ARFIMA-GARCH model to the realized volatility and the continuous sample ...
In this article, the stochastic volatility model is introduced to forecast crude oil volatility by u...
Precise modeling and forecasting of the volatility of energy futures is vital to structuring trading...
The main goal of this paper is to investigate whether the long memory behavior observed in many vola...
The aim of this paper is to propose an empirical strategy that allows the discrimination between tru...
This paper is the first to investigate the informational content of model-free forward implied volat...
This article studies the forecasting properties of linear GARCH models for closing-day futures price...
The current study emphasizes on the importance of the development of an effective price risk managem...
Today’s society requires an endless supply of energy resources to keep functioning properly. The flu...
In this paper volatility forecasting in the WTI futures market is approached with a focus on identif...
This paper builds and implements multifactor stochastic volatility models for the international oil/...
Most of the times, Economic and Financial data not only become highly volatile but also show heterog...
The study provides a framework to model the unbiased extreme value volatility estimator (The AddRS e...
This paper investigates whether structural breaks and long memory are relevant features in modeling ...
This paper examines the portfolio optimization of energy futures by using the STARR ratio that can e...
In this paper, we apply the ARFIMA-GARCH model to the realized volatility and the continuous sample ...
In this article, the stochastic volatility model is introduced to forecast crude oil volatility by u...
Precise modeling and forecasting of the volatility of energy futures is vital to structuring trading...
The main goal of this paper is to investigate whether the long memory behavior observed in many vola...
The aim of this paper is to propose an empirical strategy that allows the discrimination between tru...
This paper is the first to investigate the informational content of model-free forward implied volat...
This article studies the forecasting properties of linear GARCH models for closing-day futures price...
The current study emphasizes on the importance of the development of an effective price risk managem...
Today’s society requires an endless supply of energy resources to keep functioning properly. The flu...
In this paper volatility forecasting in the WTI futures market is approached with a focus on identif...
This paper builds and implements multifactor stochastic volatility models for the international oil/...
Most of the times, Economic and Financial data not only become highly volatile but also show heterog...
The study provides a framework to model the unbiased extreme value volatility estimator (The AddRS e...
This paper investigates whether structural breaks and long memory are relevant features in modeling ...
This paper examines the portfolio optimization of energy futures by using the STARR ratio that can e...
In this paper, we apply the ARFIMA-GARCH model to the realized volatility and the continuous sample ...
In this article, the stochastic volatility model is introduced to forecast crude oil volatility by u...