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Forecasting Commodity Prices; Futures Versus Judgment
by
Husain, Aasim M
, Bowman, Chakriya
in
Commodities
/ Prices
2004
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Do you wish to request the book?
Forecasting Commodity Prices; Futures Versus Judgment
by
Husain, Aasim M
, Bowman, Chakriya
in
Commodities
/ Prices
2004
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Paper
Forecasting Commodity Prices; Futures Versus Judgment
2004
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Overview
This paper assesses the performance of three types of commodity price forecasts--those based on judgment, those relying exclusively on historical price data, and those incorporating prices implied by commodity futures. For most of the 15 commodities in the sample, spot and futures prices appear to be nonstationary and to form a cointegrating relation. Spot prices tend to move toward futures prices over the long run, and error-correction models exploiting this feature produce more accurate forecasts. The analysis indicates that on the basis of statistical- and directional-accuracy measures, futures-based models yield better forecasts than historical-data-based models or judgment, especially at longer horizons.
Publisher
Federal Reserve Bank of St. Louis
Subject
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