Combining conditional volatility forecasts using neural networks: an application to the EMS exchange rates |
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Authors: | Michael Y. Hu Christos Tsoukalas |
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Affiliation: | a Graduate School of Management, College of Business Administration, Kent State University, Kent, OH 44242-0001, USA;b ALLTEL Wholesale Banking Solutions, Inc., 110 East 59th Street, New York, NY 10022, USA |
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Abstract: | ![]() The present paper examines the out-of-sample forecasting performance of four conditional volatility models applied to the European Monetary System (EMS) exchange rates. In order to provide improved volatility forecasts, the four models’ forecasts are combined through simple averaging, an ordinary least squares model, and an artificial neural network. The results support the EGARCH specification especially after the foreign exchange crisis of August 1993. The superiority of the EGARCH model is consistent with the nature of the EMS as a managed float regime. The ANN model performed better during the August 1993 crisis especially in terms of root mean absolute prediction error. |
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Keywords: | Conditional volatility EMS exchange rates Neural networks |
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