Dynamics of on-line learning in radial basis function networks


Autoria(s): Freeman, Jason; Saad, David
Data(s)

1997

Resumo

On-line learning is examined for the radial basis function network, an important and practical type of neural network. The evolution of generalization error is calculated within a framework which allows the phenomena of the learning process, such as the specialization of the hidden units, to be analyzed. The distinct stages of training are elucidated, and the role of the learning rate described. The three most important stages of training, the symmetric phase, the symmetry-breaking phase, and the convergence phase, are analyzed in detail; the convergence phase analysis allows derivation of maximal and optimal learning rates. As well as finding the evolution of the mean system parameters, the variances of these parameters are derived and shown to be typically small. Finally, the analytic results are strongly confirmed by simulations.

Formato

application/pdf

Identificador

http://eprints.aston.ac.uk/1208/1/NCRG_97_018.pdf

Freeman, Jason and Saad, David (1997). Dynamics of on-line learning in radial basis function networks. Physical Review E, 56 (1), pp. 907-918.

Relação

http://eprints.aston.ac.uk/1208/

Tipo

Article

PeerReviewed