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Automated Architecture Selection for Radial Basis Function Neural Networks

並列摘要


A new model selection algorithm is established to determine the best number of hidden neurons for radial basis function neural networks. We used a Bayesian information-based criterion to select the best number of hidden neurons. The new algorithm grows the number of hidden neurons while the Bayesian information-based criterion is used for improvement. The optimal parameter values of a current neural network are used in the subsequent architecture. The computational results are compared with the trial-and-error approach through publicly available data sets. It is found that the new algorithm is suitable to improve the performance of the neural networks automatically. The root mean square error function is used to measure out-of-sample performance.

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