Journal article

Effects of moving the centers in an RBF network

C Panchapakesan, M Palaniswami, D Ralph, C Manzie

IEEE Transactions on Neural Networks | IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC | Published : 2002

Abstract

In radial basis function (RBF) networks, placement of centers is said to have a significant effect on the performance of the network. Supervised learning of center locations in some applications show that they are superior to the networks whose centers are located using unsupervised methods. But such networks can take the same training time as that of sigmoid networks. The increased time needed for supervised learning offsets the training time of regular RBF networks. One way to overcome this may be to train the network with a set of centers selected by unsupervised methods and then to fine tune the locations of centers. This can be done by first evaluating whether moving the centers would d..

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University of Melbourne Researchers