一种利用自适应遗传算法提高神经网络性能的高效自适应遗传算法

Q4 Decision Sciences
Katha Kishor Kumar, S. Pabboju
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引用次数: 2

摘要

提高神经网络(NN)的性能是一个重要的课题。因此,通过对交叉和变异等遗传算子进行自适应,提出了一种自适应遗传算法(AGA)技术。我们的自适应遗传算法技术从与正常遗传算法相同的初始群体的生成开始,并对每个个体生成的染色体执行适应度计算。之后,遗传算子的交叉和突变将在最好的染色体上进行。AGA技术将用于神经网络性能改进过程。AGA将利用通过反向传播算法从NN获得的一些参数。AGA对神经网络参数的利用将提高神经网络的性能。因此,与传统的具有神经网络的遗传算法相比,通过实现高性能比可以更有效地提高神经网络的性能。该技术将在MATLAB的工作平台上实现,并对结果进行分析,以证明所提出的AGA的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Adaptive Genetic Algorithm (GA) Technique to Improve the Neural Network (NN) Performance with aid of Adaptive GA Operators
The neural network (NN) performance improvement is one of the major topics. Thus an adaptive genetic algorithm (AGA) technique is proposed by making adaptive with respect to genetic operators like crossover and mutation. Our adaptive GA technique starts with the generation of initial population as same as the normal GA and performs the fitness calculation for each individual generated chromosome. After that, the genetic operator's crossover and mutation will be performed on the best chromosomes. The AGA technique will be utilised in the NN performance improvement process. The AGA will utilise some parameters obtained from the NN by back propagation algorithm. The utilisation of NN parameters by AGA will improve the NN performance. Hence, the NN performance can be improved more effectively by achieving high performance ratio than the conventional GA with NN. The technique will be implemented in the working platform of MATLAB and the results will be analysed to demonstrate the performance of the proposed AGA.
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来源期刊
International Journal of Networking and Virtual Organisations
International Journal of Networking and Virtual Organisations Decision Sciences-Information Systems and Management
CiteScore
1.40
自引率
0.00%
发文量
25
期刊介绍: IJNVO is a forum aimed at providing an authoritative refereed source of information in the field of Networking and Virtual Organisations.
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