Abstract

We use the approach of Qu and Perron (Econom J 16(3):309–339, 2013) for the modeling and inference of volatility of a set of commodity prices in the presence of random level shifts of unknown timing, magnitude and frequency. Our approach contributes to the study of commodities in several aspects. First, we test for the presence of a genuine long-memory process in the volatility of commodities. Second, we determine that the random level shifts are certainly the main source of variation in the commodity price volatility. Finally, we estimate the volatility and its components as latent variables, thereby making it possible to evaluate their level of correlation with macroeconomic variables in small open economies such as Latin-American countries where the dependence on commodity price volatility is high. We use six commodity series: agriculture, livestock, gold, oil, industrial metals and a general commodity index. All series cover the period from January 1983 until December 2013 in daily frequency. The results show that although the occurrence of a level shift is rare, (about once every 1.5 or 1.8 years), this component clearly contributes most to the variation in the volatility. Furthermore, isolating the level shift component from the overall volatility indicates a strong relationship of this component with a set of business cycle indicators of several Latin American countries.

Highlights

  • The volatility of commodities prices such as oil or minerals is an important issue for small and open economies that depends on raw materials

  • We use a stochastic volatility (SV) model with random level shifts to estimate the commodity volatility. We applied this methodology to six indexes of SPGS: agriculture, livestock, gold, oil, industrial metals and a general commodity index

  • We intent to describe the results in a comprehensive way, we start with posterior distributions results description of each commodity, we analyze the contributions of level shifts component over all volatility, and ...nally we analized the possible comovements between volatility and several indicators relate to Peruvian business cycle

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Summary

Introduction

The volatility of commodities prices such as oil or minerals is an important issue for small and open economies that depends on raw materials. We are focused on modeling the volatility of the whole commodities market and some sectors that themselves have a huge repercussion in the global economy (i.e. gold, oil). To get this goal, we appeal to study market commodities indexes, in particular the Standar & Poors Goldman Sachs Commodity Index (hereafter S&P GSCI). It is a tradable index that is readily accessible to market participants so we take this index as the best aproximation of commodity market performance The composition of this index is favorable to energy commodities, where oil accounts for 66% of the total index.

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