This paper studies the forecasting properties of linear GARCH models for closing-day futures prices on crude oil, first position, traded in the New York Mercantile Exchange from January 1995 to November 2005. In order to account for fat tails in the empirical distribution of the series, we compare models based on the normal, Student’s t and Generalized Exponential distribution. We focus on out-of-sample predictability by ranking the models according to a large array of statistical loss functions. The results from the tests for predictive ability show that the GARCH-G model fares best for short horizons from one to three days ahead. For horizons from one week ahead, no superior model can be identified. We also consider out-ofsample l...
International audienceThis paper analyzes volatility models and their forecasting abilities in the p...
International audienceThis paper analyzes volatility models and their forecasting abilities in the p...
We examine the usefulness of several ARIMA-GARCH models for modeling and forecasting the conditional...
This paper studies the forecasting properties of linear GARCH models for closing-day futures prices ...
This article studies the forecasting properties of linear GARCH models for closing-day futures pric...
This article studies the forecasting properties of linear GARCH models for closing-day futures pric...
This article studies the forecasting properties of linear GARCH models for closing-day futures price...
This article studies the forecasting properties of linear GARCH models for closing-day futures price...
This paper extends the work of Kang et al. (2009). We use a greater number of linear and nonlinear g...
This paper uses the Markov-switching multifractal (MSM) model and generalized autoregressive conditi...
The paper examines the volatility predictive ability of the CBOE crude oil volatility index (OVX), G...
The paper examines the volatility predictive ability of the CBOE crude oil volatility index (OVX), G...
Oil price volatility forecasts have recently attracted the attention of many studies in the energy f...
AbstractThis study analysis the return volatility of spot market prices of crude oil (WTI) and natur...
International audienceThis paper analyzes volatility models and their forecasting abilities in the p...
International audienceThis paper analyzes volatility models and their forecasting abilities in the p...
International audienceThis paper analyzes volatility models and their forecasting abilities in the p...
We examine the usefulness of several ARIMA-GARCH models for modeling and forecasting the conditional...
This paper studies the forecasting properties of linear GARCH models for closing-day futures prices ...
This article studies the forecasting properties of linear GARCH models for closing-day futures pric...
This article studies the forecasting properties of linear GARCH models for closing-day futures pric...
This article studies the forecasting properties of linear GARCH models for closing-day futures price...
This article studies the forecasting properties of linear GARCH models for closing-day futures price...
This paper extends the work of Kang et al. (2009). We use a greater number of linear and nonlinear g...
This paper uses the Markov-switching multifractal (MSM) model and generalized autoregressive conditi...
The paper examines the volatility predictive ability of the CBOE crude oil volatility index (OVX), G...
The paper examines the volatility predictive ability of the CBOE crude oil volatility index (OVX), G...
Oil price volatility forecasts have recently attracted the attention of many studies in the energy f...
AbstractThis study analysis the return volatility of spot market prices of crude oil (WTI) and natur...
International audienceThis paper analyzes volatility models and their forecasting abilities in the p...
International audienceThis paper analyzes volatility models and their forecasting abilities in the p...
International audienceThis paper analyzes volatility models and their forecasting abilities in the p...
We examine the usefulness of several ARIMA-GARCH models for modeling and forecasting the conditional...