Time series forecasting with neural network ensembles: An application for exchange rate prediction

Time series forecasting with neural network ensembles: An application for exchange rate prediction

0.00 Avg rating0 Votes
Article ID: iaor20021494
Country: United Kingdom
Volume: 52
Issue: 6
Start Page Number: 652
End Page Number: 664
Publication Date: Jun 2001
Journal: Journal of the Operational Research Society
Authors: ,
Keywords: neural networks
Abstract:

This paper investigates the use of neural network combining methods to improve time series forecasting performance of the traditional single keep-the-best (KTB) model. The ensemble methods are applied to the difficult problem of exchange rate forecasting. Two general approaches to combining neural networks are proposed and examined in predicting the exchange rate between the British pound and US dollar. Specifically, we propose to use systematic and serial partitioning methods to build neural network ensembles for time series forecasting. It is found that the basic ensemble approach created with non-varying network architectures trained using different initial random weights is not effective in improving the accuracy of prediction while ensemble models consisting of different neural network structures can consistently outperform predictions of the single ‘best’ network. Results also show that neural ensembles based on different partitions of the data are more effective than those developed with the full training data in out-of-sample forecasting. Moreover, reducing correlation among forecasts made by the ensemble members by utilizing data partitioning techniques is the key to success for the neural ensemble models. Although our ensemble methods show considerable advantages over the traditional KTB approach, they do not have significant improvement compared to the widely used random walk model in exchange rate forecasting.

Reviews

Required fields are marked *. Your email address will not be published.