Predicting Oil Price Trends During Conflict With Hybrid Machine Learning Techniques

The ongoing conflict between Russia and Ukraine has introduced significant volatility into the global oil markets, highlighting the need for robust forecasting models to understand and anticipate price fluctuations during such geopolitical events. This study presents a comprehensive hybrid modeling...

Full description

Saved in:
Bibliographic Details
Main Authors: Hicham Boussatta, Marouane Chihab, Mohamed Chiny, Younes Chihab
Format: Article
Language:English
Published: Wiley 2025-01-01
Series:Applied Computational Intelligence and Soft Computing
Online Access:http://dx.doi.org/10.1155/acis/8867520
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1850235633782489088
author Hicham Boussatta
Marouane Chihab
Mohamed Chiny
Younes Chihab
author_facet Hicham Boussatta
Marouane Chihab
Mohamed Chiny
Younes Chihab
author_sort Hicham Boussatta
collection DOAJ
description The ongoing conflict between Russia and Ukraine has introduced significant volatility into the global oil markets, highlighting the need for robust forecasting models to understand and anticipate price fluctuations during such geopolitical events. This study presents a comprehensive hybrid modeling approach to predict oil prices in the context of Russia and Ukraine across three distinct periods: before the war, during the war, and the immediate aftermath of the conflict. Using advanced machine learning techniques, we developed a hybrid system combining Random Forest, ElasticNet, K-Nearest Neighbors, Gradient Boosting, and Support Vector Regressor models. These models were integrated through a Voting Regressor to enhance prediction accuracy. Our analysis revealed varying levels of predictive performance across the different periods. Prior to the war, the models showed strong predictive capabilities, evidenced by low mean-squared error (MSE) values and high coefficients of determination (R2). However, during the war, the models struggled to capture extreme volatility, resulting in significantly increased MSE and negative R2 values. Predictions for the immediate aftermath of the conflict demonstrated improvements, with a reduction in MSE and positive R2 values, indicating a return to relatively more stable market conditions. Notably, combining data from both before the war and war periods could further improve predictive accuracy, as it would reduce the impact of the conflict’s volatility on model performance. These results emphasize the challenges of forecasting oil prices in periods of geopolitical instability and underscore the importance of hybrid modeling approaches to adapt to rapidly changing market dynamics.
format Article
id doaj-art-3a83a50758024aba835cb77c6ac52e53
institution OA Journals
issn 1687-9732
language English
publishDate 2025-01-01
publisher Wiley
record_format Article
series Applied Computational Intelligence and Soft Computing
spelling doaj-art-3a83a50758024aba835cb77c6ac52e532025-08-20T02:02:12ZengWileyApplied Computational Intelligence and Soft Computing1687-97322025-01-01202510.1155/acis/8867520Predicting Oil Price Trends During Conflict With Hybrid Machine Learning TechniquesHicham Boussatta0Marouane Chihab1Mohamed Chiny2Younes Chihab3Computer Science Research LaboratoryComputer Science Research LaboratoryComputer Science Research LaboratoryComputer Science Research LaboratoryThe ongoing conflict between Russia and Ukraine has introduced significant volatility into the global oil markets, highlighting the need for robust forecasting models to understand and anticipate price fluctuations during such geopolitical events. This study presents a comprehensive hybrid modeling approach to predict oil prices in the context of Russia and Ukraine across three distinct periods: before the war, during the war, and the immediate aftermath of the conflict. Using advanced machine learning techniques, we developed a hybrid system combining Random Forest, ElasticNet, K-Nearest Neighbors, Gradient Boosting, and Support Vector Regressor models. These models were integrated through a Voting Regressor to enhance prediction accuracy. Our analysis revealed varying levels of predictive performance across the different periods. Prior to the war, the models showed strong predictive capabilities, evidenced by low mean-squared error (MSE) values and high coefficients of determination (R2). However, during the war, the models struggled to capture extreme volatility, resulting in significantly increased MSE and negative R2 values. Predictions for the immediate aftermath of the conflict demonstrated improvements, with a reduction in MSE and positive R2 values, indicating a return to relatively more stable market conditions. Notably, combining data from both before the war and war periods could further improve predictive accuracy, as it would reduce the impact of the conflict’s volatility on model performance. These results emphasize the challenges of forecasting oil prices in periods of geopolitical instability and underscore the importance of hybrid modeling approaches to adapt to rapidly changing market dynamics.http://dx.doi.org/10.1155/acis/8867520
spellingShingle Hicham Boussatta
Marouane Chihab
Mohamed Chiny
Younes Chihab
Predicting Oil Price Trends During Conflict With Hybrid Machine Learning Techniques
Applied Computational Intelligence and Soft Computing
title Predicting Oil Price Trends During Conflict With Hybrid Machine Learning Techniques
title_full Predicting Oil Price Trends During Conflict With Hybrid Machine Learning Techniques
title_fullStr Predicting Oil Price Trends During Conflict With Hybrid Machine Learning Techniques
title_full_unstemmed Predicting Oil Price Trends During Conflict With Hybrid Machine Learning Techniques
title_short Predicting Oil Price Trends During Conflict With Hybrid Machine Learning Techniques
title_sort predicting oil price trends during conflict with hybrid machine learning techniques
url http://dx.doi.org/10.1155/acis/8867520
work_keys_str_mv AT hichamboussatta predictingoilpricetrendsduringconflictwithhybridmachinelearningtechniques
AT marouanechihab predictingoilpricetrendsduringconflictwithhybridmachinelearningtechniques
AT mohamedchiny predictingoilpricetrendsduringconflictwithhybridmachinelearningtechniques
AT youneschihab predictingoilpricetrendsduringconflictwithhybridmachinelearningtechniques