Dimension reduction of technical indicators for the prediction of financial time series - Application to the BEL20 Market Index

Lendasse, Amaury;Lee, John;de Bodt, Eric;Wertz, Vincent;Verleysen, Michel
(2001) European Journal of Economic and Social Systems — Vol. 15, n° 2, p. 31-48 (2001)

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Authors
  • Lendasse, AmauryUCLouvain
    Author
  • Lee, Johnorcid-logoUCLouvain
    Author
  • de Bodt, EricUCLouvain
    Author
  • Wertz, VincentUCLouvain
    Author
  • Author
Abstract
Prediction of financial time series using artificial neural networks has been the subject of many publications, even if the predictability of financial series remains a subject of scientific debate in the financial literature. Facing this difficulty, analysts often consider a large number of exogenous indicators, which makes the fitting of neural networks extremely difficult. In this paper, we analyze how to aggregate a large number of indicators in a smaller number using -possibly nonlinear- projection methods. Nonlinear projection methods are shown to be equivalent to the linear Principal Component Analysis when the prediction tool used on the new variables is linear. Furthermore, the computation of the nonlinear projection gives an objective way to evaluate the number of resulting indicators needed for the prediction. Finally, the advantages of nonlinear projection could be further exploited by using a subsequent nonlinear prediction model. The methodology developped in the paper is validated on data from the BEL20 market index, using systematic cross-validation results.
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Citations

Lendasse, A., Lee, J., de Bodt, E., Wertz, V., & Verleysen, M. (2001). Dimension reduction of technical indicators for the prediction of financial time series - Application to the BEL20 Market Index. European Journal of Economic and Social Systems, 15(2), 31-48. https://doi.org/10.1051/ejess:2001114 (Original work published 2001)