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An efficient learning algorithm for improving generalization performance of radial basis function neural networks.

机译:一种用于提高径向基函数神经网络泛化性能的有效学习算法。

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This paper presents an efficient recursive learning algorithm for improving generalization performance of radial basis function (RBF) neural networks. The approach combines the rival penalized competitive learning (PRCL) [Xu, L., Kizyzak, A. & Oja, E. (1993). Rival penalized competitive learning for clustering analysis, RBF net and curve detection, IEEE Transactions on Neural Networks, 4, 636-649] and the regularized least squares (RLS) to provide an efficient and powerful procedure for constructing a minimal RBF network that generalizes very well. The RPCL selects the number of hidden units of network and adjusts centers, while the RLS constructs the parsimonious network and estimates the connection weights. In the RLS we derived a simple recursive algorithm, which needs no matrix calculation, and so largely reduces the computational cost. This combined algorithm significantly enhances the generalization performance and the real-time capability of the RBF networks. Simulation results of three different problems demonstrate much better generalization performance of the present algorithm over other existing similar algorithms.
机译:本文提出了一种有效的递归学习算法,用于提高径向基函数(RBF)神经网络的泛化性能。该方法结合了竞争对手的惩罚性竞争学习(PRCL)[Xu,L.,Kizyzak,A.&Oja,E.(1993)。竞争性惩罚竞争学习,用于聚类分析,RBF网络和曲线检测,IEEE Transactions on Neural Networks,4,636-649]和正则化最小二乘(RLS),为构建最小化的RBF网络提供了有效而强大的程序,好。 RPCL选择网络的隐藏单元数并调整中心,而RLS构造简约网络并估计连接权重。在RLS中,我们推导了一种简单的递归算法,该算法无需矩阵计算,因此大大降低了计算成本。这种组合算法大大提高了RBF网络的泛化性能和实时能力。三种不同问题的仿真结果证明,与其他现有的类似算法相比,本算法具有更好的泛化性能。

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