Crude oil is one of the most important types of energy for the global economy, and hence it is very attractive to understand the movement of crude oil prices. However, the sequences of crude oil prices usually show some characteristics of nonstationarity and nonlinearity, making it very challenging for accurate forecasting crude oil prices. To cope with this issue, in this paper, we propose a novel approach that integrates complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN) and extreme gradient boosting (XGBOOST), so-called CEEMDAN-XGBOOST, for forecasting crude oil prices. Firstly, we use CEEMDAN to decompose the nonstationary and nonlinear sequences of crude oil prices into several intrinsic mode functions (IMFs) ...
In order to improve the accuracy of forecasting crude oil prices, a new crude oil price forecasting ...
Prediction of oil prices is an implausible task due to the multifaceted nature of oil markets. This ...
The identification of the temporal scales related to market activities is crucial for understanding ...
Crude oil is one of the most powerful types of energy and the fluctuation of its price influences th...
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 and its prices have a great impact on the glo...
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, as one of the most important energy sources in the world, plays a crucial role in global ...
The importance of understanding the underlying characteristics of international crude oil price move...
Abstract of associated article: Forecasting crude oil price is a challenging task. Given the nonline...
Accurate forecasting for the crude oil price is important for government agencies, investors, and re...
Abstract — Crude oil price forecasting is a challenging task due to its complex nonlinear and chaoti...
The economic model derived from the supply and demand of crude oil prices is a significant component...
The accuracy of crude oil price forecasting is more important especially for economic development an...
In order to improve the accuracy of forecasting crude oil prices, a new crude oil price forecasting ...
Prediction of oil prices is an implausible task due to the multifaceted nature of oil markets. This ...
The identification of the temporal scales related to market activities is crucial for understanding ...
Crude oil is one of the most powerful types of energy and the fluctuation of its price influences th...
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 and its prices have a great impact on the glo...
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, as one of the most important energy sources in the world, plays a crucial role in global ...
The importance of understanding the underlying characteristics of international crude oil price move...
Abstract of associated article: Forecasting crude oil price is a challenging task. Given the nonline...
Accurate forecasting for the crude oil price is important for government agencies, investors, and re...
Abstract — Crude oil price forecasting is a challenging task due to its complex nonlinear and chaoti...
The economic model derived from the supply and demand of crude oil prices is a significant component...
The accuracy of crude oil price forecasting is more important especially for economic development an...
In order to improve the accuracy of forecasting crude oil prices, a new crude oil price forecasting ...
Prediction of oil prices is an implausible task due to the multifaceted nature of oil markets. This ...
The identification of the temporal scales related to market activities is crucial for understanding ...