A hybrid learning algorithm combined with generalized RLS approach for radial basis function neural networks

In this paper, a new hybrid learning method for radial basis function neural networks based on generalized recursive least square algorithm is proposed. Firstly the generalized recursive least square (GRLS) model including a general quadratic weight decay term in the energy function for the training...

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Bibliographic Details
Published inApplied mathematics and computation Vol. 205; no. 2; pp. 908 - 915
Main Authors Du, Ji-Xiang, Zhai, Chuan-Min
Format Journal Article Conference Proceeding
LanguageEnglish
Published Amsterdam Elsevier Inc 15.11.2008
Elsevier
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Summary:In this paper, a new hybrid learning method for radial basis function neural networks based on generalized recursive least square algorithm is proposed. Firstly the generalized recursive least square (GRLS) model including a general quadratic weight decay term in the energy function for the training of RBF neural networks is described. Then combined with the GRLS approach, a new hybrid learning method is proposed to meet the design goals: improving the generalization ability of the trained network. Finally experimental results demonstrate that our approach can achieve a significantly improved generalization performance of the RBF networks.
ISSN:0096-3003
1873-5649
DOI:10.1016/j.amc.2008.05.075