Nel, JacobusGupta, RanganWohar, MarkPierdzioch, Christian2024-05-202024-11Nel, J., Gupta, R., Wohar, M.E. & Pierdzioch, C. 2024, 'Climate risks and predictability of commodity returns and volatility: evidence from over 750 years of data', Climate Change Economics, vol. 15, no. 4, art. 2450003, pp. 1-40, doi : 10.1142/S2010007824500039.2010-0078 (print)2010-0086 (online)10.1142/S2010007824500039http://hdl.handle.net/2263/96070We analyze whether metrics of climate risks, as captured primarily by changes in temperature anomaly and its stochastic volatility (SV), can predict returns and volatility of 25 commodities, covering the overall historical period of 1258 to 2021. To this end, we apply a higher-order nonparametric causality-in-quantiles test to not only uncover potential in-sample predictability in the entire conditional distribution of commodity returns and volatility but also to account for nonlinearity and structural breaks which exist between commodity returns and the metrics of climate risks. We find that, unlike in the misspecified linear Granger causality tests, climate risks do predict commodity returns and volatility, though the impact on the latter is stronger, in terms of the coverage of the conditional distribution. Insights from our findings can benefit academics, investors, and policymakers in their decision-making.en© 2024 World Scientific Publishing.Climate risksCommoditiesReturns and volatility predictionsHigher-order nonparametric causality-in-quantiles testSDG-08: Decent work and economic growthClimate risks and predictability of commodity returns and volatility: evidence from over 750 years of dataPostprint Article