Topology Approach for Crude Oil Price Forecasting of Particle Swarm Optimization and Long Short-Term Memory

Forecasting crude oil prices hold significant importance in finance, energy, and economics, given its extensive impact on worldwide markets and socio-economic equilibrium. Using Long Short-Term Memory (LSTM) neural networks has exhibited noteworthy achievements in time series forecasting, specifical...

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Published in:International Journal of Advanced Computer Science and Applications
Main Author: Yusoff M.; Ehsan D.; Sharif M.Y.; Sallehud-din M.T.M.
Format: Article
Language:English
Published: Science and Information Organization 2024
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85185004760&doi=10.14569%2fIJACSA.2024.0150150&partnerID=40&md5=181d15d3d1e63664888ed7469c276a3b
id 2-s2.0-85185004760
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Yusoff M.; Ehsan D.; Sharif M.Y.; Sallehud-din M.T.M.
Topology Approach for Crude Oil Price Forecasting of Particle Swarm Optimization and Long Short-Term Memory
2024
International Journal of Advanced Computer Science and Applications
15
1
10.14569/IJACSA.2024.0150150
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85185004760&doi=10.14569%2fIJACSA.2024.0150150&partnerID=40&md5=181d15d3d1e63664888ed7469c276a3b
Forecasting crude oil prices hold significant importance in finance, energy, and economics, given its extensive impact on worldwide markets and socio-economic equilibrium. Using Long Short-Term Memory (LSTM) neural networks has exhibited noteworthy achievements in time series forecasting, specifically in predicting crude oil prices. Nevertheless, LSTM models frequently depend on the manual adjustment of hyperparameters, a task that can be laborious and demanding. This study presents a novel methodology incorporating Particle Swarm Optimization (PSO) into LSTM networks to optimize the network architecture and minimize the error. This study employs historical data on crude oil prices to explore and identify optimal hyperparameters autonomously and embedded with the star and ring topology of PSO to address the local and global search capabilities. The findings demonstrate that LSTM+starPSO is superior to LSTM+ringPSO, previous hybrid LSTM-PSO, conventional LSTM networks, and statistical time series methods in its predictive accuracy. LSTM+starPSO model offers a better RMSE of about +0.16% and +22.82% for WTI and BRENT datasets, respectively. The results indicate that the LSTM model, when enhanced with PSO, demonstrates a better proficiency in capturing the patterns and inherent dynamics data changes of crude oil prices. The proposed model offers a dual benefit by alleviating the need for manual hyperparameter tuning and serving as a valuable resource for stakeholders in the energy and financial industries interested in obtaining dependable insights into fluctuations in crude oil prices. © (2024), (Science and Information Organization). All Rights Reserved.
Science and Information Organization
2158107X
English
Article
All Open Access; Gold Open Access
author Yusoff M.; Ehsan D.; Sharif M.Y.; Sallehud-din M.T.M.
spellingShingle Yusoff M.; Ehsan D.; Sharif M.Y.; Sallehud-din M.T.M.
Topology Approach for Crude Oil Price Forecasting of Particle Swarm Optimization and Long Short-Term Memory
author_facet Yusoff M.; Ehsan D.; Sharif M.Y.; Sallehud-din M.T.M.
author_sort Yusoff M.; Ehsan D.; Sharif M.Y.; Sallehud-din M.T.M.
title Topology Approach for Crude Oil Price Forecasting of Particle Swarm Optimization and Long Short-Term Memory
title_short Topology Approach for Crude Oil Price Forecasting of Particle Swarm Optimization and Long Short-Term Memory
title_full Topology Approach for Crude Oil Price Forecasting of Particle Swarm Optimization and Long Short-Term Memory
title_fullStr Topology Approach for Crude Oil Price Forecasting of Particle Swarm Optimization and Long Short-Term Memory
title_full_unstemmed Topology Approach for Crude Oil Price Forecasting of Particle Swarm Optimization and Long Short-Term Memory
title_sort Topology Approach for Crude Oil Price Forecasting of Particle Swarm Optimization and Long Short-Term Memory
publishDate 2024
container_title International Journal of Advanced Computer Science and Applications
container_volume 15
container_issue 1
doi_str_mv 10.14569/IJACSA.2024.0150150
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85185004760&doi=10.14569%2fIJACSA.2024.0150150&partnerID=40&md5=181d15d3d1e63664888ed7469c276a3b
description Forecasting crude oil prices hold significant importance in finance, energy, and economics, given its extensive impact on worldwide markets and socio-economic equilibrium. Using Long Short-Term Memory (LSTM) neural networks has exhibited noteworthy achievements in time series forecasting, specifically in predicting crude oil prices. Nevertheless, LSTM models frequently depend on the manual adjustment of hyperparameters, a task that can be laborious and demanding. This study presents a novel methodology incorporating Particle Swarm Optimization (PSO) into LSTM networks to optimize the network architecture and minimize the error. This study employs historical data on crude oil prices to explore and identify optimal hyperparameters autonomously and embedded with the star and ring topology of PSO to address the local and global search capabilities. The findings demonstrate that LSTM+starPSO is superior to LSTM+ringPSO, previous hybrid LSTM-PSO, conventional LSTM networks, and statistical time series methods in its predictive accuracy. LSTM+starPSO model offers a better RMSE of about +0.16% and +22.82% for WTI and BRENT datasets, respectively. The results indicate that the LSTM model, when enhanced with PSO, demonstrates a better proficiency in capturing the patterns and inherent dynamics data changes of crude oil prices. The proposed model offers a dual benefit by alleviating the need for manual hyperparameter tuning and serving as a valuable resource for stakeholders in the energy and financial industries interested in obtaining dependable insights into fluctuations in crude oil prices. © (2024), (Science and Information Organization). All Rights Reserved.
publisher Science and Information Organization
issn 2158107X
language English
format Article
accesstype All Open Access; Gold Open Access
record_format scopus
collection Scopus
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