USING MACHINE LEARNING TO FORECAST NIGERIA'S CRUDE OIL PRICES FOR BUDGETING: A COMPARATIVE ANALYSIS

Authors

  • ZAKARI IDRIS MATINJA Computer Science, Federal Polytechnic Bauchi. Author
  • ISMAIL ZAHRADDEEN YAKUBU Computer Science, Federal Polytechnic Bauchi. Author
  • ZAINAB ALIYU MUSA Computer Science, Federal Polytechnic Bauchi. Author
  • SUNUSI ABDULHAMID DANTATA Computer Science, Federal Polytechnic Bauchi. Author

DOI:

https://doi.org/10.70382/sjasor.v10i9.040

Keywords:

crude oil price forecasting, Random Forest, machine learning, Nigeria, budgeting, comparative analysis

Abstract

The use of machine learning models to predict Nigeria's crude oil price—a crucial component of organizational and governmental budgeting is examined in this paper. A number of machine learning methods, including Random Forest, Extra Trees, Decision Trees, and Support Vector Machines (SVM), were assessed using historical monthly crude oil price data that was acquired from the Central Bank of Nigeria (CBN). With test RMSE = 7.7890 and MAE = 5.3054, the Random Forest model had the highest test score (R2 = 0.8921). Model consistency was evaluated using standard deviation, RMSE, and cross-validation (CV). Discussions were held regarding residuals, error behavior, and the modeling's budgeting implications. Future work with hybrid and deep learning models was outlined, along with suggested improvements. The approach and results may help Nigerian authorities provide more accurate crude price projections for budgetary planning.

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Published

2025-11-03

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How to Cite

ZAKARI IDRIS MATINJA, ISMAIL ZAHRADDEEN YAKUBU, ZAINAB ALIYU MUSA, & SUNUSI ABDULHAMID DANTATA. (2025). USING MACHINE LEARNING TO FORECAST NIGERIA’S CRUDE OIL PRICES FOR BUDGETING: A COMPARATIVE ANALYSIS. Journal of Advanced Science and Optimization Research, 10(9). https://doi.org/10.70382/sjasor.v10i9.040

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