On the statistical physics of radial basis function networks

作者:Sean B. Holden, Mahesan Niranjan

摘要

Techniques from statistical physics have been applied successfully in recent years to the analysis of the generalization performance of neural networks. However, most of the analysis to date has been for perceptron-like networks or simple generalizations thereof such as committee machines, and none of the networks studied are used to any significant extent in practice. This letter presents results obtained in applying techniques from statistical physics to a popular class of neural networks that has been used successfully in many practical applications: the Gaussian radial basis function networks. We obtain expressions for the learning curves exhibited by these networks in the high-temperature limit for both realizable and unrealizable target rules.

论文关键词:Neural Network, Statistical Physic, Artificial Intelligence, Basis Function, Complex System

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论文官网地址:https://doi.org/10.1007/BF02279933