Keyword search (4,164 papers available)

"price" Keyword-tagged Publications:

Title Authors PubMed ID
1 Tuning Deep Learning for Predicting Aluminum Prices Under Different Sampling: Bayesian Optimization Versus Random Search Alicia Estefania Antonio Figueroa 41751647
CONCORDIA
2 Assessment of coal supply chain under carbon trade policy by extended exergy accounting method Roozbeh Nia A; Awasthi A; Bhuiyan N; 37363701
ENCS
3 Volatility spillover around price limits in an emerging market Aktas OU; Kryzanowski L; Zhang J; 32837364
JMSB
4 The Impact of Income and Taxation in a Price-Tiered Cigarette Market: findings from the ITC Bangladesh Surveys. Huq I, Nargis N, Lkhagvasuren D, Hussain AG, Fong GT 29695459
PSYCHOLOGY

 

Title:Tuning Deep Learning for Predicting Aluminum Prices Under Different Sampling: Bayesian Optimization Versus Random Search
Authors:Alicia Estefania Antonio Figueroa
Link:https://pubmed.ncbi.nlm.nih.gov/41751647/
DOI:10.3390/e28020145
Publication:Entropy (Basel, Switzerland)
Keywords:Bayesian optimizationLSTMaluminum pricedeep feedforward neural networksdeep learningforecastingrandom searchsupport vector regression
PMID:41751647 Category: Date Added:2026-02-27
Dept Affiliation: CONCORDIA
1 Department of Supply Chain and Business Technology Management, John Molson School of Business, Concordia University, Montreal, QC H3H 0A1, Canada.

Description:

This work implements deep learning models to capture non-linear and complex data behavior in aluminum price data. Deep learning models include the long short-term memory (LSTM) and deep feedforward neural networks (FFNN). The support vector regression (SVR) is employed as a base model for comparison. Each predictive model is tuned by using two different optimization methods: Bayesian optimization (BO) and random search (RS). All models are tested on daily, weekly, and monthly data. Three performance metrics are used to evaluate each forecasting model: the root mean squared error (RMSE), mean absolute error (MAE), and the coefficient of determination (R2). The experimental results show that the LSTM-BO is the best-performing model across the time horizons (daily, weekly, and monthly). By consistently achieving the lowest RMSE, MAE, and highest R2, the LSTM-BO outperformed all the other models, including SVR-BO, FFNN-BO, LSTM-RS, SVR-RS, and FFNN-RS. In addition, predictive models utilizing BO regularly outperformed those using RS. In summary, LSTM-BO is highly beneficial for aluminum spot price forecasting.





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