Improving forecasting accuracy of crude oil price using decomposition ensemble model with reconstruction of IMFs based on ARIMA model

The accuracy of crude oil price forecasting is more important especially for economic development and considered as the lifeblood of the industry. Hence, in this paper, a decomposition-ensemble model with the reconstruction of intrinsic mode functions (IMFs) is proposed for forecasting the crude oil...

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Main Authors: Muhammad Aamir, Muhammad Aamir, Shabri, Ani, Muhammad Ishaq, Muhammad Ishaq
Format: Article
Language:English
Published: Penerbit UTM Press 2018
Subjects:
Online Access:http://eprints.utm.my/85095/1/AniShabri2018_ImprovingForecastingAccuracyofCrudeOil.pdf
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author Muhammad Aamir, Muhammad Aamir
Shabri, Ani
Muhammad Ishaq, Muhammad Ishaq
author_facet Muhammad Aamir, Muhammad Aamir
Shabri, Ani
Muhammad Ishaq, Muhammad Ishaq
author_sort Muhammad Aamir, Muhammad Aamir
collection ePrints
description The accuracy of crude oil price forecasting is more important especially for economic development and considered as the lifeblood of the industry. Hence, in this paper, a decomposition-ensemble model with the reconstruction of intrinsic mode functions (IMFs) is proposed for forecasting the crude oil prices based on the well-known autoregressive moving average (ARIMA) model. Essentially, the reconstruction of IMFs enhances the forecasting accuracy of the existing decomposition ensemble models. The proposed methodology works in four steps: decomposition of the complex data into several IMFs using EEMD, reconstruction of IMFs based on order of ARIMA model, prediction of every reconstructed IMF, and finally ensemble the prediction of every IMF for the final output. A case study was carried out using two crude oil prices time series (i.e. Brent and West Texas Intermediate (WTI)). The empirical results exhibited that the reconstruction of IMFs based on order of ARIMA model was adequate and provided the best forecast. In order to check the correctness, robustness and generalizability, simulations were carried out.
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spelling utm.eprints-850952020-03-04T01:39:20Z http://eprints.utm.my/85095/ Improving forecasting accuracy of crude oil price using decomposition ensemble model with reconstruction of IMFs based on ARIMA model Muhammad Aamir, Muhammad Aamir Shabri, Ani Muhammad Ishaq, Muhammad Ishaq QA Mathematics The accuracy of crude oil price forecasting is more important especially for economic development and considered as the lifeblood of the industry. Hence, in this paper, a decomposition-ensemble model with the reconstruction of intrinsic mode functions (IMFs) is proposed for forecasting the crude oil prices based on the well-known autoregressive moving average (ARIMA) model. Essentially, the reconstruction of IMFs enhances the forecasting accuracy of the existing decomposition ensemble models. The proposed methodology works in four steps: decomposition of the complex data into several IMFs using EEMD, reconstruction of IMFs based on order of ARIMA model, prediction of every reconstructed IMF, and finally ensemble the prediction of every IMF for the final output. A case study was carried out using two crude oil prices time series (i.e. Brent and West Texas Intermediate (WTI)). The empirical results exhibited that the reconstruction of IMFs based on order of ARIMA model was adequate and provided the best forecast. In order to check the correctness, robustness and generalizability, simulations were carried out. Penerbit UTM Press 2018 Article PeerReviewed application/pdf en http://eprints.utm.my/85095/1/AniShabri2018_ImprovingForecastingAccuracyofCrudeOil.pdf Muhammad Aamir, Muhammad Aamir and Shabri, Ani and Muhammad Ishaq, Muhammad Ishaq (2018) Improving forecasting accuracy of crude oil price using decomposition ensemble model with reconstruction of IMFs based on ARIMA model. Malaysian Journal of Fundamental and Applied Sciences, 14 (4). pp. 471-483. ISSN 2289-5981 https://dx.doi.org/10.11113/mjfas.v14n4.1013 DOI:10.11113/mjfas.v14n4.1013
spellingShingle QA Mathematics
Muhammad Aamir, Muhammad Aamir
Shabri, Ani
Muhammad Ishaq, Muhammad Ishaq
Improving forecasting accuracy of crude oil price using decomposition ensemble model with reconstruction of IMFs based on ARIMA model
title Improving forecasting accuracy of crude oil price using decomposition ensemble model with reconstruction of IMFs based on ARIMA model
title_full Improving forecasting accuracy of crude oil price using decomposition ensemble model with reconstruction of IMFs based on ARIMA model
title_fullStr Improving forecasting accuracy of crude oil price using decomposition ensemble model with reconstruction of IMFs based on ARIMA model
title_full_unstemmed Improving forecasting accuracy of crude oil price using decomposition ensemble model with reconstruction of IMFs based on ARIMA model
title_short Improving forecasting accuracy of crude oil price using decomposition ensemble model with reconstruction of IMFs based on ARIMA model
title_sort improving forecasting accuracy of crude oil price using decomposition ensemble model with reconstruction of imfs based on arima model
topic QA Mathematics
url http://eprints.utm.my/85095/1/AniShabri2018_ImprovingForecastingAccuracyofCrudeOil.pdf
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