The accuracy of crude oil price forecasting is more important especially for economic development and is considered a 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 enhanced 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 fo...
Abstract of associated article: Forecasting crude oil price is a challenging task. Given the nonline...
Crude oil and condensates supply and demand strives to be main authority of the sustenance of almost...
In this paper, a hybrid time series forecasting approach is proposed consisting of wavelet transform...
The accuracy of crude oil price forecasting is more important especially for economic development an...
Accurate forecasting for the crude oil price is important for government agencies, investors, and re...
The development of economic and industry depend upon how well the accuracy of crude oil price foreca...
The accuracy of time series forecasting is more important and can assist organizations to take up-to...
This paper used complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN) based h...
Crude oil is one of the most important types of energy and its prices have a great impact on the glo...
This paper proposes a time series forecasting approach combining wavelet transform and autoregressiv...
The importance of understanding the underlying characteristics of international crude oil price move...
Crude oil is the main commodity of the global economy because oil is used as an ingredient for many ...
Abstract As the lifeline of various industries, crude oil is frequently considered a pillar of econo...
Crude oil is one of the most important types of energy for the global economy, and hence it is very ...
This paper identified the best ARIMA time series model for monthly crude oil price in Nigeria spanni...
Abstract of associated article: Forecasting crude oil price is a challenging task. Given the nonline...
Crude oil and condensates supply and demand strives to be main authority of the sustenance of almost...
In this paper, a hybrid time series forecasting approach is proposed consisting of wavelet transform...
The accuracy of crude oil price forecasting is more important especially for economic development an...
Accurate forecasting for the crude oil price is important for government agencies, investors, and re...
The development of economic and industry depend upon how well the accuracy of crude oil price foreca...
The accuracy of time series forecasting is more important and can assist organizations to take up-to...
This paper used complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN) based h...
Crude oil is one of the most important types of energy and its prices have a great impact on the glo...
This paper proposes a time series forecasting approach combining wavelet transform and autoregressiv...
The importance of understanding the underlying characteristics of international crude oil price move...
Crude oil is the main commodity of the global economy because oil is used as an ingredient for many ...
Abstract As the lifeline of various industries, crude oil is frequently considered a pillar of econo...
Crude oil is one of the most important types of energy for the global economy, and hence it is very ...
This paper identified the best ARIMA time series model for monthly crude oil price in Nigeria spanni...
Abstract of associated article: Forecasting crude oil price is a challenging task. Given the nonline...
Crude oil and condensates supply and demand strives to be main authority of the sustenance of almost...
In this paper, a hybrid time series forecasting approach is proposed consisting of wavelet transform...