Crude oil price prediction using CEEMDAN and LSTM-attention with news sentiment index
Crude oil is one of the most powerful types of energy and the fluctuation of its price influences the global economy. Therefore, building a scientific model to accurately predict the price of crude oil is significant for investors, governments and researchers. However, the nonlinearity and nonstatio...
Main Author: | Hu Zhenda |
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Format: | Article |
Language: | English |
Published: |
EDP Sciences
2021-01-01
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Series: | Oil & Gas Science and Technology |
Online Access: | https://ogst.ifpenergiesnouvelles.fr/articles/ogst/full_html/2021/01/ogst200291/ogst200291.html |
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