This study aims to forecast oil prices using evolutionary techniques such as gene expression programming (GEP) and artificial neural network (NN) models to predict oil prices over the period from January 2, 1986 to June 12, 2012. Autoregressive integrated moving average (ARIMA) models are employed to benchmark evolutionary models. The results reveal that the GEP technique outperforms traditional statistical techniques in predicting oil prices. Further, the GEP model outperforms the NN and the ARIMA models in terms of the mean squared error, the root mean squared error and the mean absolute error. Finally, the GEP model also has the highest explanatory power as measured by the R-squared statistic. The results of this study have important imp...
Global development relies much on oil to run different types of machines. Using oil to power many ty...
When the literature regarding applications of neural networks is investigated, it appears that a sub...
Title from first page of PDF file (viewed November 30, 2010)Includes bibliographical references (p. ...
This study investigated the prediction of crude oil price based on energy product prices using genet...
Price of oil is important for the economies of oil exporting and oil importing countries alike. Ther...
Some events occur sometimes without any warning, such as war, revolution, financial crises, terroris...
The paper proposes a machine-learning approach to predict oil price. Market participants can forecas...
The global economy is assured to be very sensitive to the volatility of the oil market. The benefici...
Abstract- This paper contains short term monthly forecasts of crude oil prices using compumetric met...
Prediction of oil prices is an implausible task due to the multifaceted nature of oil markets. This ...
Commodity prices are very volatile which presents substantial challenges and uncertainty for the glo...
The global economy is assured to be very sensitive to the volatility of the oil market. The benefici...
Oil price forecasting has received a great deal of attention from practitioners and researchers ali...
Crude oil is one of the most traded non-food products or commodities in the world. In Indonesia, cru...
Oil prices have impacts on both economic and non-economic factors. Therefore, the accurate predictio...
Global development relies much on oil to run different types of machines. Using oil to power many ty...
When the literature regarding applications of neural networks is investigated, it appears that a sub...
Title from first page of PDF file (viewed November 30, 2010)Includes bibliographical references (p. ...
This study investigated the prediction of crude oil price based on energy product prices using genet...
Price of oil is important for the economies of oil exporting and oil importing countries alike. Ther...
Some events occur sometimes without any warning, such as war, revolution, financial crises, terroris...
The paper proposes a machine-learning approach to predict oil price. Market participants can forecas...
The global economy is assured to be very sensitive to the volatility of the oil market. The benefici...
Abstract- This paper contains short term monthly forecasts of crude oil prices using compumetric met...
Prediction of oil prices is an implausible task due to the multifaceted nature of oil markets. This ...
Commodity prices are very volatile which presents substantial challenges and uncertainty for the glo...
The global economy is assured to be very sensitive to the volatility of the oil market. The benefici...
Oil price forecasting has received a great deal of attention from practitioners and researchers ali...
Crude oil is one of the most traded non-food products or commodities in the world. In Indonesia, cru...
Oil prices have impacts on both economic and non-economic factors. Therefore, the accurate predictio...
Global development relies much on oil to run different types of machines. Using oil to power many ty...
When the literature regarding applications of neural networks is investigated, it appears that a sub...
Title from first page of PDF file (viewed November 30, 2010)Includes bibliographical references (p. ...