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Post by Sapphire Capital on Sept 2, 2008 20:57:41 GMT 4
The Predictive Power of Value-at-Risk Models in Commodity Futures Markets Roland Füss European Business School (EBS) Zeno Adams European Business School (EBS) Dieter G. Kaiser Feri Institutional Advisors GmbH; Frankfurt School of Finance & Management June 25, 2008 Abstract: This paper examines the in- and out-of-sample performance of various value-at-risk (VaR) approaches for commodity futures investments: conventional VaR, the Cornish-Fisher (CF) VaR, GARCH-type VaR models, and semi-parametric conditional autoregressive value-at-risk (CAViaR) models, which do not depend on the assumption of normally distributed i.i.d. error terms. A model comparison reveals that determining the best VaR model depends strongly on the underlying return series. Our results suggest that the CAViaR and GARCH-type models generally outperform the other VaRs. These models can incorporate time-varying volatility adequately and are sensitive to changes in the return-generating process. This has important implications for the risk management of portfolios involving passive long-only commodity futures positions with heavy-tailed data-generating processes. papers.ssrn.com/sol3/Delivery.cfm/SSRN_ID1237565_code1090176.pdf?abstractid=1233442&mirid=2
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