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Differential Evolution-Based Optimization of Kernel Parameters in Radial Basis Function Networks for Classification

机译:径向基函数网络中基于微分演化的内核参数优化

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摘要

In this paper a two phases learning algorithm with a modified kernel for radial basis function neural networks is proposed for classification. In phase one a new meta-heuristic approach differential evolution is used to reveal the parameters of the modified kernel. The second phase focuses on optimization of weights for learning the networks. Further, a predefined set of basis functions is taken for empirical analysis of which basis function is better for which kind of domain. The simulation result shows that the proposed learning mechanism is evidently producing better classification accuracy vis-a-vis radial basis function neural networks (RBFNs) and genetic algorithm-radial basis Junction (GA-RBF) neural networks.
机译:本文提出了一种针对径向基函数神经网络的带有修正核的两阶段学习算法进行分类。在第一阶段,使用一种新的元启发式方法差分进化来揭示修改后的内核的参数。第二阶段集中于优化权重以学习网络。此外,采用一组预定的基本函数用于对哪种基本函数对哪种类型的域更好的经验分析。仿真结果表明,相对于径向基函数神经网络(RBFN)和遗传算法-径向基结(GA-RBF)神经网络,该学习机制显然具有更好的分类精度。

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