Forecasting the price of gold

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.

[1]  P. Hansen A Test for Superior Predictive Ability , 2005 .

[2]  Amine Lahiani,et al.  Commodity Price Correlation And Time Varying Hedge Ratios , 2014 .

[3]  Won Joong Kim,et al.  Forecasting the price of gold using dynamic model averaging , 2015 .

[4]  S. Johansen Estimation and Hypothesis Testing of Cointegration Vectors in Gaussian Vector Autoregressive Models , 1991 .

[5]  M. Arouri,et al.  The Role of Natural Gas Consumption and Trade in Tunisia’s Output , 2014 .

[6]  Carlo Altavilla,et al.  Forecasting and combining competing models of exchange rate determination , 2006, SSRN Electronic Journal.

[7]  C. Sims MACROECONOMICS AND REALITY , 1977 .

[8]  H. Theil Principles of econometrics , 1971 .

[9]  Jean-François Carpantier,et al.  Real exchanges rates, commodity prices and structural factors in developing countries , 2015 .

[10]  H. Bierens,et al.  TIME-VARYING COINTEGRATION , 2010, Econometric Theory.

[11]  A. Zhigljavsky,et al.  Forecasting European industrial production with singular spectrum analysis , 2009 .

[12]  Duc Khuong Nguyen,et al.  The time scale behavior of oil-stock relationships: what we learn from the ASEAN-5 countries , 2014 .

[13]  Robert B. Litterman Forecasting with Bayesian Vector Autoregressions-Five Years of Experience , 1984 .

[14]  Erkan Topal,et al.  An overview of global gold market and gold price forecasting , 2010 .

[15]  Robert B. Litterman,et al.  Forecasting and Conditional Projection Using Realistic Prior Distributions , 1983 .

[16]  Emmanuel Sirimal Silva,et al.  Forecasting U.S. Tourist arrivals using optimal Singular Spectrum Analysis , 2015 .

[17]  Abdol S. Soofi,et al.  Predicting inflation dynamics with singular spectrum analysis , 2013 .

[18]  Duc Khuong Nguyen,et al.  Dynamic spillovers among major energy and cereal commodity prices , 2014 .

[19]  Peter Reinhard Hansen,et al.  The Model Confidence Set , 2010 .

[20]  Duc Khuong Nguyen,et al.  Volatility forecasting and risk management for commodity markets in the presence of asymmetry and long memory , 2014 .

[21]  P. Perron,et al.  Computation and Analysis of Multiple Structural-Change Models , 1998 .

[22]  Emmanuel Sirimal Silva,et al.  A COMBINATION FORECAST FOR ENERGY-RELATED CO2 EMISSIONS IN THE UNITED STATES , 2013 .

[23]  Steven C. Wheelwright,et al.  Forecasting methods and applications. , 1979 .

[24]  Rob J Hyndman,et al.  Forecasting Time Series With Complex Seasonal Patterns Using Exponential Smoothing , 2011 .

[25]  D. K. Nguyen,et al.  Responses of international stock markets to oil price surges: a regime-switching perspective , 2015 .

[26]  Piotr Cofta,et al.  The Model of Confidence , 2007 .

[27]  Rob J Hyndman,et al.  Automatic Time Series Forecasting: The forecast Package for R , 2008 .

[28]  M. S. B. Aissa,et al.  A wavelet-based copula approach for modeling market risk in agricultural commodity markets , 2013 .

[29]  Christian Pierdzioch,et al.  The international business cycle and gold-price fluctuations , 2014 .

[30]  M. Arouri,et al.  Short- and long-run relationships between natural gas consumption and economic growth: Evidence from Pakistan , 2014 .

[31]  Christian Pierdzioch,et al.  On the efficiency of the gold market: Results of a real-time forecasting approach , 2014 .

[32]  H. M’henni,et al.  Energy Use and Economic Growth in Africa: A Panel Granger-Causality Investigation , 2014, SSRN Electronic Journal.

[33]  Duc Khuong Nguyen,et al.  US monetary policy and sectoral commodity prices , 2015 .

[34]  Rangan Gupta,et al.  Forecasting China's foreign exchange reserves using dynamic model averaging: The roles of macroeconomic fundamentals, financial stress and economic uncertainty , 2014 .

[35]  Long memory and asymmetry in the volatility of commodity markets and Basel Accord: choosing between models , 2013 .

[36]  R. Todd Improving economic forecasting with Bayesian vector autoregression , 1984 .

[37]  J. Stock,et al.  INFERENCE IN LINEAR TIME SERIES MODELS WITH SOME UNIT ROOTS , 1990 .

[38]  Duc Khuong Nguyen,et al.  Carbon emissions—income relationships with structural breaks: the case of the Middle Eastern and North African countries , 2017, Environmental Science and Pollution Research.

[39]  David E. Spencer Developing a Bayesian vector autoregression forecasting model , 1993 .

[40]  Anatoly Zhigljavsky,et al.  Forecasting UK Industrial Production with Multivariate Singular Spectrum Analysis , 2013 .

[41]  I. Abid,et al.  Conditional Correlations and Volatility Spillovers between Crude Oil and Oil- exporting and importing countries , 2014 .

[42]  P. Phillips,et al.  Testing the null hypothesis of stationarity against the alternative of a unit root: How sure are we that economic time series have a unit root? , 1992 .

[43]  Duc Khuong Nguyen,et al.  Oil prices and MENA stock markets: new evidence from nonlinear and asymmetric causalities during and after the crisis period , 2014 .

[44]  Gauging the nonstationarity and asymmetries in the oil-stock price links: a multivariate analysis , 2014 .

[45]  Paul Newbold,et al.  Testing the equality of prediction mean squared errors , 1997 .

[46]  J. Stock,et al.  Forecasting Output and Inflation: The Role of Asset Prices , 2001 .

[47]  Emmanuel Sirimal Silva,et al.  On the use of singular spectrum analysis for forecasting U.S. trade before, during and after the 2008 recession , 2015 .

[48]  A. Tiwari,et al.  Energy Utilization and Economic Growth in France: Evidence from Asymmetric Causality Test , 2014 .

[49]  Duc Khuong Nguyen,et al.  World gold prices and stock returns in China: Insights for hedging and diversification strategies , 2015 .

[50]  A. Raftery,et al.  Space-time modeling with long-memory dependence: assessing Ireland's wind-power resource. Technical report , 1987 .

[51]  K. Hadri Testing The Null Hypothesis Of Stationarity Against The Alternative Of A Unit Root In Panel Data With Serially Correlated Errors , 1999 .