Forecasting the Price of Gold

Segnon Mawuli, Hassani Hossein, Silva Emmanuel Sirimal, Gupta Rangan


Abstract
This article seeks to evaluate the appropriateness of a variety of existing forecasting techniques (17 methods) at providing accurate and statistically significant forecasts for gold price. We report the results from the nine most competitive techniques. Special consideration is given to the ability of these techniques to provide forecasts which outperforms the random walk (RW) as we noticed that certain multivariate models (which included prices of silver, platinum, palladium and rhodium, besides gold) were also unable to outperform the RW in this case. Interestingly, the results show that none of the forecasting techniques are able to outperform the RW at horizons of 1 and 9 steps ahead, and on average, the exponential smoothing model is seen providing the best forecasts in terms of the lowest root mean squared error over the 24-month forecasting horizons. Moreover, we find that the univariate models used in this article are able to outperform the Bayesian autoregression and Bayesian vector autoregressive models, with exponential smoothing reporting statistically significant results in comparison with the former models, and classical autoregressive and the vector autoregressive models in most cases.

Keywords
ARIMA; ETS; TBATS; ARFIMA; AR; VAR; BAR; BVAR; random walk; gold; forecast; multivariate; univariate



Publication type
Research article (journal)

Peer reviewed
Yes

Publication status
Published

Year
2015

Journal
Applied Economics

Volume
47

Issue
39

Pages range
4141-4152

Language
English

ISSN
0003-6846

DOI