Do US economic conditions at the state level predict the realized volatility of oil-price returns? A quantile machine-learning approach

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Authors

Gupta, Rangan
Pierdzioch, Christian

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Publisher

SpringerOpen

Abstract

Because the U.S. is a major player in the international oil market, it is interesting to study whether aggregate and state-level economic conditions can predict the subsequent realized volatility of oil price returns. To address this research question, we frame our analysis in terms of variants of the popular heterogeneous autoregressive realized volatility (HAR-RV) model. To estimate the models, we use quantile-regression and quantile machine learning (Lasso) estimators. Our estimation results highlights the differential efects of economic conditions on the quantiles of the conditional distribution of realized volatility. Using weekly data for the period April 1987 to December 2021, we document evidence of predictability at a biweekly and monthly horizon.

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DATA AVAILABILITY: The datasets used and/or analysed during the current study are available from the corresponding author on reasonable request

Keywords

Oil price, Realized volatility, Economic conditions indexes, Quantile Lasso, Prediction models, SDG-08: Decent work and economic growth, United States (US), U.S. economic conditions, Heterogeneous autoregressive realized volatility (HAR-RV)

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Citation

Gupta, R., Pierdzioch, C. Do U.S. economic conditions at the state level predict the realized volatility of oil-price returns? A quantile machine-learning approach. Financial Innovation 9, 24 (2023). https://doi.org/10.1186/s40854-022-00435-5.