Radial basis function nets for time series prediction
Authors: Bouchachia, A.
Journal: International Journal of Computational Intelligence Systems
Volume: 2
Issue: 2
Pages: 147-157
eISSN: 1875-6883
ISSN: 1875-6891
DOI: 10.2991/ijcis.2009.2.2.6
Abstract:This paper introduces a novel ensemble learning approach based on recurrent radial basis function networks (RRBFN) for time series prediction with the aim of increasing the prediction accuracy. Standing for the base learner in this ensemble, the adaptive recurrent network proposed is based on the nonlinear autoregressive with exogenous input model (NARX) and works according to a multi-step (MS) prediction regime. The ensemble learning technique combines various MS- NARX-based RRBFNs which differ in the set of controlling parameters. The evaluation of the approach includes a discussion on the performance of the individual predictors and their combination. Copyright: the authors.
Source: Scopus
Preferred by: Hamid Bouchachia
Radial Basis Function Nets for Time Series Prediction
Authors: Bouchachia, A.
Journal: INTERNATIONAL JOURNAL OF COMPUTATIONAL INTELLIGENCE SYSTEMS
Volume: 2
Issue: 2
Pages: 147-157
eISSN: 1875-6883
ISSN: 1875-6891
Source: Web of Science (Lite)