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A Research on the Optimal Design of BP Neural Network Based on Improved GEP

机译:基于改进GEP的BP神经网络优化设计研究

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Due to the functionality of dynamic mapping for nonlinear complex data, BP neural network (BP-NN) as a typical neural network has increasingly been applied to a variety of applications. Although it has been successfully applied, its prominent shortcoming, such as the local optimum problem and the setting problem for the initial parameter of neural network, have not been completely eliminated. In this paper, an optimization algorithm for the architecture, weights and thresholds of neural networks using an improved gene expression programming (IGEP) was presented. The algorithm effectively combines the global search ability of GEP and the local search ability of BP-NN. To obtain a better efficiency, the basic GEP was improved by the dynamic adjustment of the fitness function, genetic operators and the number of evolutionary generations. The experimental results show that the IGEP-BP algorithm is an effective method for evolving neural network.
机译:由于针对非线性复杂数据的动态映射功能,BP神经网络(BP-NN)作为一种典型的神经网络已越来越多地应用于各种应用。尽管已经成功应用了它,但是它的突出缺点,例如局部最优问题和神经网络初始参数的设置问题,还没有完全消除。在本文中,提出了一种使用改进的基因表达程序(IGEP)的神经网络的结构,权重和阈值的优化算法。该算法有效地结合了GEP的全局搜索能力和BP-NN的局部搜索能力。为了获得更好的效率,通过对适应度函数,遗传算子和进化代数的动态调节来改善基本GEP。实验结果表明,IGEP-BP算法是发展神经网络的有效方法。

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