Forecasting the price of gold using dynamic model averaging

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Authors

Aye, Goodness Chioma
Gupta, Rangan
Hammoudeh, Shawkat
Kim, Won Joong

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Publisher

Elsevier

Abstract

We develop models for examining possible predictors of the return on gold that embrace six global factors (business cycle, nominal, interest rate, commodity, exchange rate and stock price factors) extracted from a recursive principal component analysis (PCA) and two uncertainty indices (the Kansas City Fed’s financial stress index and the U.S. Economic uncertainty index). Specifically, by comparing with other alternative models, we show that the dynamic model averaging (DMA) and dynamic model selection (DMS) models outperform not only a linear model (such as random walk) but also the Bayesian model averaging (BMA) model for examining possible predictors of the return of gold. The DMS is the best overall across all forecast horizons. Our result is also robust to a version of the PCA that uses all the 28 potential predictors instead of categorizing them, as well as, alternative out-of-sample period. Generally, all the predictors show strong predictive power at one time or another though at varying magnitudes, while the exchange rate factor and the Kansas City Fed’s financial stress index appear to be strong at almost all horizons and sub-periods. However, the forecasting prowess of the exchange rate is supreme.

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Keywords

Bayesian, State space models, Gold, Macroeconomic fundamentals, Forecasting

Sustainable Development Goals

Citation

Aye, G, Gupta, R, Hammoudeh, S & Kim, WJ 2015, 'Forecasting the price of gold using dynamic model averaging', International Review of Financial Analysis, vol. 41, pp. 257-266.