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Point and interval prediction of crude oil futures prices based on chaos theory and multiobjective slime mold algorithm
by
Chen, Heli
, Liu, Feng
, Sun, Weixin
, Wang, Yong
in
Accuracy
/ Algorithms
/ Business and Management
/ Chaos theory
/ Combinatorics
/ Crude oil
/ Crude oil prices
/ Data processing
/ Deep learning
/ Energy sources
/ Forecasting
/ Futures
/ Futures market
/ Machine learning
/ Neural networks
/ Operations Research/Decision Theory
/ Original Research
/ Petroleum
/ Prediction models
/ Prediction theory
/ Prices and rates
/ Robustness
/ Sensitivity analysis
/ Simulation
/ Supply and demand
/ Theory of Computation
2025
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Point and interval prediction of crude oil futures prices based on chaos theory and multiobjective slime mold algorithm
by
Chen, Heli
, Liu, Feng
, Sun, Weixin
, Wang, Yong
in
Accuracy
/ Algorithms
/ Business and Management
/ Chaos theory
/ Combinatorics
/ Crude oil
/ Crude oil prices
/ Data processing
/ Deep learning
/ Energy sources
/ Forecasting
/ Futures
/ Futures market
/ Machine learning
/ Neural networks
/ Operations Research/Decision Theory
/ Original Research
/ Petroleum
/ Prediction models
/ Prediction theory
/ Prices and rates
/ Robustness
/ Sensitivity analysis
/ Simulation
/ Supply and demand
/ Theory of Computation
2025
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Do you wish to request the book?
Point and interval prediction of crude oil futures prices based on chaos theory and multiobjective slime mold algorithm
by
Chen, Heli
, Liu, Feng
, Sun, Weixin
, Wang, Yong
in
Accuracy
/ Algorithms
/ Business and Management
/ Chaos theory
/ Combinatorics
/ Crude oil
/ Crude oil prices
/ Data processing
/ Deep learning
/ Energy sources
/ Forecasting
/ Futures
/ Futures market
/ Machine learning
/ Neural networks
/ Operations Research/Decision Theory
/ Original Research
/ Petroleum
/ Prediction models
/ Prediction theory
/ Prices and rates
/ Robustness
/ Sensitivity analysis
/ Simulation
/ Supply and demand
/ Theory of Computation
2025
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Point and interval prediction of crude oil futures prices based on chaos theory and multiobjective slime mold algorithm
Journal Article
Point and interval prediction of crude oil futures prices based on chaos theory and multiobjective slime mold algorithm
2025
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Overview
Crude oil is the most important energy source in the world, and fluctuations in oil prices can significantly influence investors, companies, and governments. However, crude oil prices have numerous characteristics, including randomness, sudden structural changes, intrinsic nonlinearity, volatility, and chaotic nature. This makes the accurate forecasting of crude oil prices a difficult and challenging task. In this paper, a hybrid prediction model for crude oil futures prices is proposed, the accuracy and robustness of which are demonstrated via controlled experiments and sensitivity analysis. This study uses a new data denoising method for data processing to improve the accuracy and stability of the predictions of crude oil prices. Furthermore, the chaotic time-series prediction method, shallow neural networks, linear model prediction methods, and deep learning methods are adopted as submodels. The results of interval forecasts with narrow widths and high prediction accuracies are derived by introducing a confidence interval adjustment coefficient. The results of the simulation experiments indicate that the proposed hybrid prediction model exhibits higher accuracy and efficiency, as well as better robustness of the forecasting than the control models. In summary, the proposed forecasting framework can derive accurate point and interval forecasts and provide a valuable reference for the price forecasting of crude oil futures.
Publisher
Springer US,Springer,Springer Nature B.V
Subject
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