Safe havens, machine learning, and the sources of geopolitical risk : a forecasting analysis using over a century of data

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Authors

Gupta, Rangan
Karmakar, Sayar
Pierdzioch, Christian

Journal Title

Journal ISSN

Volume Title

Publisher

Springer

Abstract

We use monthly data covering a century-long sample period (1915–2021) to study whether geopolitical risk helps to forecast subsequent gold volatility. We account not only for geopolitical threats and acts, but also for 39 country-specific sources of geopolitical risk. The response of subsequent volatility is heterogeneous across countries and nonlinear. We find that accounting for geopolitical risk at the country level improves forecast accuracy, especially when we use random forests to estimate our forecasting models. As an extension, we report empirical evidence on the predictive value of the country-level sources of geopolitical risk for two other candidate safe-haven assets, oil and silver, over the sample periods 1900–2021 and 1915–2021, respectively. Our results have important implications for the portfolio and risk-management decisions of investors who seek a safe haven in times of heightened geopolitical tensions.

Description

DATA AVAILABITY STATEMENT: The authors declare that they will make available the data and computer used to derive the results documented in this research upon request.

Keywords

Gold, Geopolitical risk, Forecasting, Returns, Volatility, Random forests, SDG-08: Decent work and economic growth

Sustainable Development Goals

SDG-08:Decent work and economic growth

Citation

Gupta, R., Karmakar, S. & Pierdzioch, C. Safe Havens, Machine Learning, and the Sources of Geopolitical Risk: A Forecasting Analysis Using Over a Century of Data. Comput Econ 64, 487–513 (2024). https://doi.org/10.1007/s10614-023-10452-w.