Effective forecasting of carbon prices helps investors to judge carbon market conditions and promotes the environment and economic sustainability. The contribution of this paper is constructing a novel secondary decomposition hybrid carbon price forecasting model, namely CEEMD-SE-VMD-LSTM. It is noteworthy that the sample entropy is introduced to identify the highly complex signals rather than empirically determined in previous studies. Specifically, the complementary ensemble empirical mode decomposition (CEEMD) model is used to decompose the original price signals. The sample entropy (SE) and variational mode decomposition (VMD) are conducted to recognize and secondary decompose the highly complex components, while the long short-term mem...
Accurately predicting the carbon price sequence is important and necessary for promoting the develop...
In this study, the hybrid of combination-mixed data sampling regression model and back propagation n...
In this paper, we propose a novel hybrid model that extends prior work involving ensemble empirical ...
Numerous studies show that it is reasonable and effective to apply decomposition technology to deal ...
Carbon trading is a significant mechanism created to control carbon emissions, and the increasing en...
The carbon market can provide economic incentives for manufacturing industry to reduce carbon emissi...
Accurately predicting carbon price is crucial for risk avoidance in the carbon financial market. In ...
Accurately predicting carbon price is crucial for risk avoidance in the carbon financial market. In ...
Accurately predicting carbon price is crucial for risk avoidance in the carbon financial market. In ...
Accurately predicting carbon price is crucial for risk avoidance in the carbon financial market. In ...
Accurately predicting carbon price is crucial for risk avoidance in the carbon financial market. In ...
Accurately predicting carbon price is crucial for risk avoidance in the carbon financial market. In ...
Accurate prediction of the carbon trading price (CTP) is crucial to the decision-making of relevant ...
With the widespread attention of governments around the world on climate issues, carbon pricing-rela...
Conventional methods are less robust in terms of accurately forecasting non-stationary and nonlinear...
Accurately predicting the carbon price sequence is important and necessary for promoting the develop...
In this study, the hybrid of combination-mixed data sampling regression model and back propagation n...
In this paper, we propose a novel hybrid model that extends prior work involving ensemble empirical ...
Numerous studies show that it is reasonable and effective to apply decomposition technology to deal ...
Carbon trading is a significant mechanism created to control carbon emissions, and the increasing en...
The carbon market can provide economic incentives for manufacturing industry to reduce carbon emissi...
Accurately predicting carbon price is crucial for risk avoidance in the carbon financial market. In ...
Accurately predicting carbon price is crucial for risk avoidance in the carbon financial market. In ...
Accurately predicting carbon price is crucial for risk avoidance in the carbon financial market. In ...
Accurately predicting carbon price is crucial for risk avoidance in the carbon financial market. In ...
Accurately predicting carbon price is crucial for risk avoidance in the carbon financial market. In ...
Accurately predicting carbon price is crucial for risk avoidance in the carbon financial market. In ...
Accurate prediction of the carbon trading price (CTP) is crucial to the decision-making of relevant ...
With the widespread attention of governments around the world on climate issues, carbon pricing-rela...
Conventional methods are less robust in terms of accurately forecasting non-stationary and nonlinear...
Accurately predicting the carbon price sequence is important and necessary for promoting the develop...
In this study, the hybrid of combination-mixed data sampling regression model and back propagation n...
In this paper, we propose a novel hybrid model that extends prior work involving ensemble empirical ...