The Standard Generalised Autoregressive Conditionally Heteroskedastic (sGARCH) model and the Functional Generalised Autoregressive Conditionally Heteroskedastic (fGARCH) model were applied to study the volatility of the Autoregressive Fractionally Integrated Moving Average (ARFIMA) model, which is the primary objective of this study. The other goal of this paper is to expand on the researchers' previous work by examining long memory and volatilities simultaneously, by using the ARFIMA-sGARCH hybrid model and comparing it against the ARFIMA-fGARCH hybrid model. Consequently, the hybrid models were configured with the monthly Brent crude oil price series for the period from January 1979 to July 2019. These datasets were considered as the glob...
This paper has examined the long memory of oil market volatility. For this purpose, the paper has em...
Crude oil is an important energy commodity to mankind. The fluctuation of crude oil prices has affec...
We examine the usefulness of several ARIMA-GARCH models for modeling and forecasting the conditional...
The Brent crude oil price indices are typically nonlinear, nonstationary, and non-normal behavior w...
This study investigates the time-varying volatility of two major crude oil markets, the West Texas I...
The increase in oil price volatility in recent years has raised the importance of forecasting it acc...
In this article, the stochastic volatility model is introduced to forecast crude oil volatility by u...
The relationship between the prices of crude oil and its refined products is at the heart of the oil...
This paper adopts the Markov-switching multifractal (MSM) model and a battery of generalized autoreg...
This paper uses the Markov-switching multifractal (MSM) model and generalized autoregressive conditi...
This paper extends the work of Kang et al. (2009). We use a greater number of linear and nonlinear g...
This study attempts to introduce an appropri¬¬ate model for modeling and forecasting Iran’s crude oi...
IntroductionThe price of crude oil as an essential commodity in the world economy shows a pattern an...
The volatility in the crude oil price in the international market has risen much interest into the ...
Crude oil has an important role in the financial indicators of global markets and economies. The pri...
This paper has examined the long memory of oil market volatility. For this purpose, the paper has em...
Crude oil is an important energy commodity to mankind. The fluctuation of crude oil prices has affec...
We examine the usefulness of several ARIMA-GARCH models for modeling and forecasting the conditional...
The Brent crude oil price indices are typically nonlinear, nonstationary, and non-normal behavior w...
This study investigates the time-varying volatility of two major crude oil markets, the West Texas I...
The increase in oil price volatility in recent years has raised the importance of forecasting it acc...
In this article, the stochastic volatility model is introduced to forecast crude oil volatility by u...
The relationship between the prices of crude oil and its refined products is at the heart of the oil...
This paper adopts the Markov-switching multifractal (MSM) model and a battery of generalized autoreg...
This paper uses the Markov-switching multifractal (MSM) model and generalized autoregressive conditi...
This paper extends the work of Kang et al. (2009). We use a greater number of linear and nonlinear g...
This study attempts to introduce an appropri¬¬ate model for modeling and forecasting Iran’s crude oi...
IntroductionThe price of crude oil as an essential commodity in the world economy shows a pattern an...
The volatility in the crude oil price in the international market has risen much interest into the ...
Crude oil has an important role in the financial indicators of global markets and economies. The pri...
This paper has examined the long memory of oil market volatility. For this purpose, the paper has em...
Crude oil is an important energy commodity to mankind. The fluctuation of crude oil prices has affec...
We examine the usefulness of several ARIMA-GARCH models for modeling and forecasting the conditional...