Abstract

Accurate forecasting for the crude oil price is important for government agencies, investors, and researchers. To cope with this issue, in this paper, a new paradigm is designed for the reconstruction of intrinsic mode functions (IMFs) of decomposition and ensemble models to reduce the complexity in computation and to enhance the forecasting accuracy. Decomposition and ensemble methodologies significantly enhance the forecasting accuracy under the framework of “divide and conquer” with the proposed reconstruction of IMFs method. The proposed approach used the autocorrelation at lag 1 of all IMFs for the reconstruction. The ensemble empirical mode decomposition (EEMD) technique is employed to decompose the data into different IMFs. Models that utilized the decomposed data relatively perform well, as compared to its application to the undecomposed data. However, sometimes, the decomposition may produce poor results due to the error accumulation at the end. Thus, in this study, the reconstruction of IMFs is proposed for minimizing the aforementioned error, thereby increasing the forecasting accuracy. The Brent and West Texas Intermediate (WTI) datasets (daily and weekly) are exploited to compare the forecasting performance of autoregressive integrated moving average (ARIMA) along with artificial neural network (ANN) models with the decomposed data. The results have proven that the new paradigm of reconstruction of IMFs through autocorrelation was a better and simple strategy that significantly improved the performance of single models including ARIMA and ANN. Hence, it is concluded that the proposed model takes less computational time and achieved higher forecasting accuracy with the reconstruction of IMFs as opposed to using all IMFs.

Highlights

  • Crude oil is a very important commodity in the world because of its unique nature, as it affects the life of every individual in many ways

  • Daily. e Brent COPs time series contain a total of 12436 observations, the first 9,949 observations belong to the training series, and the rest 2487 part of the testing series. e is the West Texas Intermediate (WTI) COPs time series containing a total of 9060 observations, the first 7248 observations belong to the training series, while the rest of 1812 part of the testing series

  • Us, the proposed method of intrinsic mode functions (IMFs) reconstruction through autocorrelation significantly improved the performance of the well-known autoregressive integrated moving average (ARIMA) and artificial neural network (ANN) models. us, from this study, the suggested model is ensemble empirical mode decomposition (EEMD)-R-ANN which produced the highest values for DS and lowermost values for RMSE, MAPE, and MAE for both Brent and WTI datasets

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Summary

Introduction

Crude oil is a very important commodity in the world because of its unique nature, as it affects the life of every individual in many ways. According to the IEA, in early 2018, the world currently consumes 99.3 million barrels of oil and liquid fuels daily. In global market, it is the most active and heavily traded commodity. Oil is a nonrenewable commodity, but the world consumes it in different ways; it is a challenge for mathematicians, statisticians, and econometricians to develop a better strategy for understanding the price changing aspect of crude oil. Due to the irregular and stochastic nature of oil prices, it is a very complex and challenging task for researchers to develop an appropriate model for COPs forecasting. Due to the irregular and stochastic nature of oil prices, it is a very complex and challenging task for researchers to develop an appropriate model for COPs forecasting. e compound and complex nature of the COPs

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