Market volatility and the dynamic hedging of multi-commodity price risk |
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Authors: | Gabriel J. Power Dmitry V. Vedenov David P. Anderson Steven Klose |
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Affiliation: | 1. Department of Finance and Insurance , School of Business Administration, Laval University (Université Laval), 2325 Rue de la Terrasse , Quebec City , QC G1V 0A6 , Canada gabriel.power@fsa.ulaval.ca;3. Department of Agricultural Economics , Texas A&4. M University, 2124 TAMU , College Station , TX 77843-2124 , USA |
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Abstract: | Commodity cash and futures prices experienced a severe boom-and-bust cycle between 2006 and 2009. Increases in commodity price volatility have raised concerns about the usefulness of commodity futures and options as risk management tools. Dynamic hedging strategies have the potential to improve risk management when conditional (co)variances depart significantly from their unconditional, long-run counterparts and may be useful to decision-makers despite their greater complexity and higher transaction costs. We propose a Nonparametric Copula-based Generalized Autoregressive Conditional Heteroscedastic (NPC-GARCH) approach to estimate time-varying hedge ratios, and evaluate the benefits of dynamic hedging during four sub-periods between 2000 and 2011 using a stylized Texas cattle feedlot management problem. The NPC-GARCH approach allows for a flexible, nonlinear and asymmetric dependence structure between cash and futures prices for different commodities. We find that NPC-GARCH dynamic hedging performs better than either static, GARCH-Dynamic Conditional Correlation (DCC) or GARCH-Baba, Engle, Kraft and Kroner (BEKK) hedging in terms of lower tail risk (expected shortfall), but that there is no significant difference between hedging approaches in terms of portfolio variance reduction. |
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Keywords: | copula dynamic hedging feedlot hedge ratios multivariate GARCH price risk |
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