Forecasting (May 2021)

A Time-Varying Gerber Statistic: Application of a Novel Correlation Metric to Commodity Price Co-Movements

  • Bernardina Algieri,
  • Arturo Leccadito,
  • Pietro Toscano

DOI
https://doi.org/10.3390/forecast3020022
Journal volume & issue
Vol. 3, no. 2
pp. 339 – 354

Abstract

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This study investigates the daily co-movements in commodity prices over the period 2006–2020 using a novel approach based on a time-varying Gerber correlation. The statistic is computed considering a set of probabilities estimated via non-traditional models that give a time-varying structure to the measure. The results indicate that there are several co-movements across commodities, that these co-movements change over time, and that they are tendentially positive. Conditional auto-regressive multithreshold logit models show higher forecasting accuracy for agricultural returns, while dynamic conditional correlation models are more accurate for energy products and metals. The proposed models are shown to be superior in terms of forecasting power to the benchmark method which is based on estimating the Gerber correlation moving a rolling window.

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