posted on 2025-05-09, 10:49authored byChristian Ullrich, Detlef Seese, Stephan Chalup
This paper analyzes and examines the general ability of Support Vector Machine (SVM) models to correctly predict and trade daily EUR exchange rate directions. Seven models with varying kernel functions are considered. Each SVM model is benchmarked against traditional forecasting techniques in order to ascertain its potential value as out-of-sample forecasting and quantitative trading tool. It is found that hyperbolic SVMs perform well in terms of forecasting accuracy and trading results via a simulated strategy. This supports the idea that SVMs are promising learning systems for coping with nonlinear classification tasks in the field of financial time series applications.
History
Source title
Advances in Data Analysis: Proceedings of the 30th Annual Conference of the Gesellschaft für Klassifikation e.V., Freie Universität Berlin, March 8–10, 2006, Part VII
Name of conference
30th Annual Conference of the Gesellschaft für Klassifikation e.V.
Location
Berlin, Germany
Start date
2006-03-08
End date
2006-03-10
Pagination
539-546
Publisher
Springer
Place published
Berlin, Germany
Language
en, English
College/Research Centre
Faculty of Engineering and Built Environment
School
School of Electrical Engineering and Computer Science
Rights statement
The original publication is available at www.springerlink.com