This study aims to investigate the crude oil volatility using a two components autoregressive conditional heteroscedasticity (ARCH) model with the inclusion of abrupt jump feature. The model is able to capture abrupt jumps, news impact, clustering volatility, long persistence volatility and heavy-tailed distributed error which are commonly observed in the crude oiltime series. For the empirical study, we have selected the WTI crude oil index from year 2000 to 2016. The results found that by including the multiple-abrupt jumps in ARCH model, there are significant improvements of estimation evaluations as compared with the standard ARCH models. The outcomes of this study can provide useful information for risk management and portfolio analysi...
This paper investigates the conditional correlations and volatility spillovers between crude oil ret...
textabstractThis paper estimates univariate and multivariate conditional volatility and conditional ...
This paper extends the work of Kang et al. (2009). We use a greater number of linear and nonlinear g...
This study investigates the time-varying volatility of two major crude oil markets, the West Texas I...
International audienceThis paper analyzes volatility models and their forecasting abilities in the p...
Oil markets are subject to extreme shocks (e.g. Iraq’s invasion of Kuwait), causing the oil market p...
This paper uses autoregressive jump intensity (ARJI) model to show that the oil price has both GARCH...
This study provides a framework based on an extension of the Conditional Autoregressive Range (CARR)...
The increase in oil price volatility in recent years has raised the importance of forecasting it acc...
Crude oil price volatility has been analyzed extensively for organized spot, forward and futures mar...
Crude oil price volatility has been analyzed extensively for organized spot, forward and futures mar...
This paper estimates univariate and multivariate conditional volatility and conditional correlation ...
We evaluate alternative models of the volatility of commodity futures prices based on high-frequency...
This paper estimates univariate and multivariate conditional volatility and conditional correlation ...
textabstractCrude oil price volatility has been analyzed extensively for organized spot, forward and...
This paper investigates the conditional correlations and volatility spillovers between crude oil ret...
textabstractThis paper estimates univariate and multivariate conditional volatility and conditional ...
This paper extends the work of Kang et al. (2009). We use a greater number of linear and nonlinear g...
This study investigates the time-varying volatility of two major crude oil markets, the West Texas I...
International audienceThis paper analyzes volatility models and their forecasting abilities in the p...
Oil markets are subject to extreme shocks (e.g. Iraq’s invasion of Kuwait), causing the oil market p...
This paper uses autoregressive jump intensity (ARJI) model to show that the oil price has both GARCH...
This study provides a framework based on an extension of the Conditional Autoregressive Range (CARR)...
The increase in oil price volatility in recent years has raised the importance of forecasting it acc...
Crude oil price volatility has been analyzed extensively for organized spot, forward and futures mar...
Crude oil price volatility has been analyzed extensively for organized spot, forward and futures mar...
This paper estimates univariate and multivariate conditional volatility and conditional correlation ...
We evaluate alternative models of the volatility of commodity futures prices based on high-frequency...
This paper estimates univariate and multivariate conditional volatility and conditional correlation ...
textabstractCrude oil price volatility has been analyzed extensively for organized spot, forward and...
This paper investigates the conditional correlations and volatility spillovers between crude oil ret...
textabstractThis paper estimates univariate and multivariate conditional volatility and conditional ...
This paper extends the work of Kang et al. (2009). We use a greater number of linear and nonlinear g...