Forecasting the realized variance of oil-price returns using machine learning : is there a role for U.S. state-level uncertainty?

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Authors

Cepni, Oguzhan
Gupta, Rangan
Pienaar, Daniel
Pierdzioch, Christian

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Publisher

Elsevier

Abstract

Predicting the variance of oil-price returns is of paramount importance for policymakers and investors. Recent research has focused on whether disaggregate measures of economic-policy uncertainty provide better forecasts. Given that the United States (U.S.) is a major player in the international oil market, we extend this line of research by exploring by means of machine-learning techniques whether accounting for U.S. state-level measures of economic-policy uncertainty results in more accurate forecasts. We find improvements in forecast accuracy, especially when we study intermediate and long forecast horizons. This finding is robust to various changes in the model configuration (realized variance vs. realized volatility, sample period, recursive vs. rolling-estimation window, loss function of forecast consumers). Understandably, our findings have important implications for oil traders and policy authorities.

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Keywords

Oil price, Realized variance of oil-price, Forecasting, Machine learning, Aggregate uncertainty, Regional uncertainty, SDG-08: Decent work and economic growth

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Citation

Cepni, O., Gupta, R., Pienaar, D. et al. 2022, 'Forecasting the realized variance of oil-price returns using machine learning: Is there a role for U.S. state-level uncertainty?', Energy Economics, vol. 114, art. 106229, pp. 1-14, doi : 10.1016/j.eneco.2022.106229.