Improving the Generalization Properties of Radial Basis Function Neural Networks 论文

1991Neural Computation引用 327
Neural Networks and ApplicationsModel Reduction and Neural NetworksAdvanced Numerical Analysis Techniques

摘要

An important feature of radial basis function neural networks is the existence of a fast, linear learning algorithm in a network capable of representing complex nonlinear mappings. Satisfactory generalization in these networks requires that the network mapping be sufficiently smooth. We show that a modification to the error functional allows smoothing to be introduced explicitly without significantly affecting the speed of training. A simple example is used to demonstrate the resulting improvement in the generalization properties of the network.