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改善遗传神经网络收敛性的研究
引用本文:李享梅,赵天昀.改善遗传神经网络收敛性的研究[J].计算机应用,2005,25(12):2789-2791.
作者姓名:李享梅  赵天昀
作者单位:1.成都信息工程学院网络工程系; 2.郑州大学信息管理系
摘    要:针对BP神经网络中采用的梯度下降法局部搜索能力强、全局搜索能力差和遗传神经网络中采用的遗传算法全局搜索能力强、局部搜索能力差的特点,提出了一种集梯度下降法和遗传算法优点为一体的混合智能学习法(Hybrid Intelligence learning algorithm),简称HI算法,并将其应用到优化多层前馈型神经网络连接权问题。对该算法进行了设计和实现,从理论和实际两方面证明混合智能学习法神经网络与BP神经网络和基于遗传算法的神经网络相比有更好的运算性能、更快的收敛速度和更高的精度。

关 键 词:遗传算法  遗传神经网络  人工神经网络  BP神经网络  梯度下降法  混合智能学习法  
文章编号:1001-9081(2005)12-2789-03
收稿时间:2005-06-23
修稿时间:2005-06-23

Study on improving the convergence of genetic neural networks
LI Xiang-mei,ZHAO Tian-yun.Study on improving the convergence of genetic neural networks[J].journal of Computer Applications,2005,25(12):2789-2791.
Authors:LI Xiang-mei  ZHAO Tian-yun
Affiliation:1.Department of Network Engineering,Chengdu University of Information Technology,Chengdu Sichuan 610225,China;2.Department of Information Management,Zhengzhou University,Zhengzhou Henan 450001,China
Abstract:To describe the advantage and shortcoming of gradient descent algorithm and genetic algorithm for training connection weights of neural networks,a new algorithm combined genetic algorithm with gradient descent algorithm was proposed,referred as to Hybrid Intelligence learning algorithm(HI).Applied to the problem of optimizing the connection weight of the feedforward neural networks,the algorithm was feasible.The design and realization of HI was introduced.And it was proved that hybrid intelligence learning algorithm is better,faster and more accurate than gradient descent algorithm and genetic algorithm in theory and practice.
Keywords:Genetic Algorithms(GA)  GA neural networks  artificial neural networks  BP neural network  gradient descent algorithm  HI algorithms(Hybrid Intelligence learning algorithm)
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