Forecasting commodity returns: a comparative study of linear machine learning models’ predictive performance

Rizzitano, Paola (A.A. 2024/2025) Forecasting commodity returns: a comparative study of linear machine learning models’ predictive performance. Tesi di Laurea in Financial economics, Luiss Guido Carli, relatore Nicola Borri, pp. 53. [Master's Degree Thesis]

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Abstract/Index

Data presentation and analysis. Commodity futures prices. Forecasting methodology. Autoregressive models. Multivariate ordinary least squares. Regularized predictive regressions: lasso. Regularized predictive regression: ridge. Results. Autoregressive models as a time-series benchmark. Predictive signals and preliminary evidence. Forecasting results: expanding window-OLS. Forecasting results: expanding window–LASSO. Forecasting results: expanding window–ridge. Discussion. Heterogeneity in commodity returns’ predictability. Gold: financialized asset and safe heaven dynamics. Corn: inventory cycles and gradual information diffusion. Natural gas: volatility, regime shifts and model instability.

References

Bibliografia: pp. 45-46.

Thesis Type: Master's Degree Thesis
Institution: Luiss Guido Carli
Degree Program: Master's Degree Programs > Master's Degree Program in Economics and Finance (LM-56)
Chair: Financial economics
Thesis Supervisor: Borri, Nicola
Thesis Co-Supervisor: Patnaik, Megha
Academic Year: 2024/2025
Session: Extraordinary
Deposited by: Alessandro Perfetti
Date Deposited: 16 Jun 2026 14:05
Last Modified: 16 Jun 2026 14:05
URI: https://tesi.luiss.it/id/eprint/46177

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