Long-term forecast of energy commodities price using machine learning

被引:89
作者
Herrera, Gabriel Paes [1 ,2 ]
Constantino, Michel [2 ]
Tabak, Benjamin Miranda [3 ]
Pistori, Hemerson [2 ,4 ]
Su, Jen-Je [1 ]
Naranpanawa, Athula [1 ]
机构
[1] Griffith Univ, Dept Accounting Finance & Econ, Nathan Campus, Nathan, Qld 4111, Australia
[2] Univ Catolica Dom Bosco, Dept Environm Sci & Sustainabil, Campo Grande, MS, Brazil
[3] Getulio Vargas Fdn EPPG FGV, Sch Publ Policy & Govt, Brasilia, DF, Brazil
[4] Fed Univ Mato Grosso Sul UFMS, Dept Comp Sci, Campo Grande, MS, Brazil
关键词
ANN; Random forests; Natural gas; Coal; Oil; TIME-SERIES MODELS; ARTIFICIAL NEURAL-NETWORK; CRUDE-OIL PRICE; RANGE DEPENDENCE; ENSEMBLE; PREDICTION; ARIMA; METHODOLOGY; SHOCKS;
D O I
10.1016/j.energy.2019.04.077
中图分类号
O414.1 [热力学];
学科分类号
摘要
We compare the long-horizon forecast performance of traditional econometric models with machine learning methods (Neural Networks and Random Forests) for the main energy commodities in the world using monthly prices provided by the International Monetary Fund (IMF). We study the case of Oil (Brent, WTI and Dubai Fateh), Coal (AU) and Gas (US and Russia). Models accuracy are measured using RMSE and MAPE and the M-DM test is applied to evaluate whether there is a statistically significant difference between the methods. We computed thousands of tests regarding the machine learning parameters combinations as there is no method to set the optimal structure for these models. The results show that machine learning methods outperform traditional econometric methods and also that they present an additional advantage, which is the capacity to predict turning points. This study adds further evidence for the discussion on the use of machine learning algorithms for the development of more accurate forecasts to support policymakers and help the decision-making process in the international energy market. (C) 2019 Elsevier Ltd. All rights reserved.
引用
收藏
页码:214 / 221
页数:8
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