Deep Learning Based Prediction of Commodity Prices Using LSTM

Commodity price prediction using deep learning, specifically LSTM models, is a challenging task due to limited data, price volatility, and the complexity of capturing temporal dependencies. In recent years, various techniques have been explored to address these challenges, such as transfer learning,...

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Published in2023 4th International Conference on Smart Electronics and Communication (ICOSEC) pp. 1708 - 1715
Main Authors Deepa, P.B., Daisy, Josephine
Format Conference Proceeding
LanguageEnglish
Published IEEE 20.09.2023
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DOI10.1109/ICOSEC58147.2023.10276011

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Abstract Commodity price prediction using deep learning, specifically LSTM models, is a challenging task due to limited data, price volatility, and the complexity of capturing temporal dependencies. In recent years, various techniques have been explored to address these challenges, such as transfer learning, model interpretability, handling seasonality, and ensemble learning. However, existing systems still face issues related to model interpretability, uncertainty quantification, and adaptability to evolving market conditions. This article aims to analyze one of the machine learning methods and what applications it can have in the financial world. Specifically, it aims to explore a technique called deep learning. To do this, some methods are analyzed, which are most relevant and most used in the industry, which are found within the deep learning method. Once the selected methods are analyzed, it is intended to implement them in a programming environment, in this case Python is chosen, and then a practical case is developed and evaluated. The case in question is the forecasting of commodity prices, with particular focus on the price of Brent. Different technical analysis indicators will be used in this forecasting model, knowing that there is no solid statistical basis in their use, but in practice most traders use them and, in the absence of shocks, on a macroeconomic basis, the results obtained when using them are, in general, quite adequate. Finally, the results of the predictions obtained are compared under different models to calculate which model gives us the greatest advantage.
AbstractList Commodity price prediction using deep learning, specifically LSTM models, is a challenging task due to limited data, price volatility, and the complexity of capturing temporal dependencies. In recent years, various techniques have been explored to address these challenges, such as transfer learning, model interpretability, handling seasonality, and ensemble learning. However, existing systems still face issues related to model interpretability, uncertainty quantification, and adaptability to evolving market conditions. This article aims to analyze one of the machine learning methods and what applications it can have in the financial world. Specifically, it aims to explore a technique called deep learning. To do this, some methods are analyzed, which are most relevant and most used in the industry, which are found within the deep learning method. Once the selected methods are analyzed, it is intended to implement them in a programming environment, in this case Python is chosen, and then a practical case is developed and evaluated. The case in question is the forecasting of commodity prices, with particular focus on the price of Brent. Different technical analysis indicators will be used in this forecasting model, knowing that there is no solid statistical basis in their use, but in practice most traders use them and, in the absence of shocks, on a macroeconomic basis, the results obtained when using them are, in general, quite adequate. Finally, the results of the predictions obtained are compared under different models to calculate which model gives us the greatest advantage.
Author Deepa, P.B.
Daisy, Josephine
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Snippet Commodity price prediction using deep learning, specifically LSTM models, is a challenging task due to limited data, price volatility, and the complexity of...
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StartPage 1708
SubjectTerms Adaptation models
Computational modeling
Convolutional neural network (CNN)
Deep learning
Finance
Long short-term memory (LSTM)
Predictive models
Solid modeling
Stock market
Transfer learning
Uncertainty
Title Deep Learning Based Prediction of Commodity Prices Using LSTM
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