Lazy Learning in Radial Basis Neural Networks: A Way of Achieving More Accurate Models

作者:José M. Valls, Inés M. Galván, Pedro Isasi

摘要

Radial Basis Neural Networks have been successfully used in a large number of applications having in its rapid convergence time one of its most important advantages. However, the level of generalization is usually poor and very dependent on the quality of the training data because some of the training patterns can be redundant or irrelevant. In this paper, we present a learning method that automatically selects the training patterns more appropriate to the new sample to be approximated. This training method follows a lazy learning strategy, in the sense that it builds approximations centered around the novel sample. The proposed method has been applied to three different domains

论文关键词:improving generalization ability, kernel functions, K-means algorithm, lazy learning, radial basis neural networks

论文评审过程:

论文官网地址:https://doi.org/10.1007/s11063-004-0635-6