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A mended hybrid learning algorithm for radial basis function neural networks to improve generalization capability

机译:一种改进的径向基函数神经网络混合学习算法,提高泛化能力

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摘要

A two-step learning scheme for radial basis function neural networks, which combines the genetic algorithm (GA) with the hybrid learning algorithm (HLA), is proposed in this paper. It is compared with the methods of the GA, the recursive orthogonal least square algorithm (ROLSA) and another two-step learning scheme for RBF neural networks, which combines the K-means clustering with the HLA (K-means + HLA). Our proposed method has the best generalization performance.
机译:提出了一种将遗传算法(GA)和混合学习算法(HLA)相结合的径向基函数神经网络的两步学习方案。将其与遗传算法,递归正交最小二乘算法(ROLSA)和另一种针对RBF神经网络的两步学习方案进行了比较,该方案将K均值聚类与HLA结合在一起(K均值+ HLA)。我们提出的方法具有最佳的泛化性能。

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