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TRAINING MLP NEURAL NETWORKS BY MEANS OF GENETIC ALGORITHMS

机译:通过遗传算法训练MLP神经网络

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Despite the success of neural networks, their design is still largely performed through a consequent process of definition of the architecture and a training process to adjust the weights. Recently, new methods based on evolutionary computation have been applied to the synthesis of neural networks. Genetic algorithms are powerful search techniques that can by applied for designing neural networks, by replacing traditional training algorithms. This work starts from the Neural Network based System Identification toolbox and extends it with a technique based on genetic algorithms. GAs encode the network as individuals in a two-dimensional way, one dimension coding the weights and the other the type of the activation function. Thus, GAs are used for adjusting the weights and simultaneous search for the activation function of each network's node. More experiments concerning network training by means of GAs are performed and some experimental results are presented.
机译:尽管神经网络的成功,但它们的设计仍然在很大程度上通过了架构的定义过程和调整权重的培训过程的过程来进行。最近,基于进化计算的新方法已经应用于神经网络的合成。遗传算法是通过替换传统训练算法来设计神经网络的强大搜索技术。此工作从基于神经网络的系统识别工具箱开始,并使用基于遗传算法的技术扩展。天然气以二维方式为单独的网络编码,一个维度编码权重和其他激活功能的类型。因此,气体用于调整权重和同时搜索每个网络节点的激活功能。通过气体进行更多关于网络训练的实验,并提出了一些实验结果。

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