Forecasting Exchange Rates with Mixed Models

Authors

  • Laura Maria Badea The Bucharest University of Economic Studies

Keywords:

machine learning techniques, Artificial Neural Networks, ARIMA, exchange rate forecasting, learning algorithms, BFGS optimization

Abstract

Gaining accuracy in exchange rate forecasting applications provides true benefits for financial activities. Supported today by the advancements in computing power, machine learning techniques provide good alternatives to traditional time series estimation methods. Very approached in time series forecasting are Artificial Neural Networks (ANNs) which offer robust results and allow a flexible data manipulation. When integrating both, the “white-box” feature of conventional methods and the complexity of machine learning techniques, forecasting models perform even better in terms of generated errors. In this study, input variables (independent variables) are selected using an ARIMA technique and are further employed in differently configured multilayered feed-forward neural networks using Broyden-Fletcher-Goldfarb-Shanno (BFGS) optimization algorithm to perform predictions on EUR/RON and CHF/RON exchange rates. Results in terms of mean squared error highlight good results when using mixed models.

Author Biography

Laura Maria Badea, The Bucharest University of Economic Studies

PhD stdent, Dep. of Cybernetics

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Published

2013-06-30

How to Cite

Badea, L. M. (2013). Forecasting Exchange Rates with Mixed Models. Journal of Mobile, Embedded and Distributed Systems, 5(2), 84-89. Retrieved from http://jmeds.eu/index.php/jmeds/article/view/Forecasting_Exchange_Rates_with_Mixed_Models