4.7 Article

Volatility of main metals forecasted by a hybrid ANN-GARCH model with regressors

Journal

EXPERT SYSTEMS WITH APPLICATIONS
Volume 84, Issue -, Pages 290-300

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.eswa.2017.05.024

Keywords

ANN-GARCH; GARCH models; Volatility prediction; Gold; Silver; Copper

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In this article, we analyze volatility forecasts associated with the price of gold, silver, and copper, three of the most important metals in the world market. First, a group of GARCH models are used to forecast volatility, including explanatory variables like the US Dollar-Euro and US Dollar-Yen exchange rates, the oil price, and the Chinese, Indian, British, and American stock market indexes. Subsequently, these model predictions are used as inputs for a neural network in order to analyze the increase in hybrid predictive power. The results obtained show that for these three metals, using the hybrid neural network model increases the forecasting power of out-of-sample volatility. In order to optimize the results, we conducted a series of sensitizations of the artificial neural network architecture and analyses for different cases, finding that the best models to forecast the price return volatility of these main metals are the ANN-GARCH model with regressors. Due to the heteroscedasticity in the financial series, the loss function used is Heteroskedasticity-adjusted Mean Squared Error (HMSE), and to test the superiority of the models, the Model Confidence Set is used. (C) 2017 Elsevier Ltd. All rights reserved.

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