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A Noble Approach for Better Training with Neuro-Genetic System Using Apical Dominance Based Genetic Algorithm

机译:基于顶点优势遗传算法的神经遗传系统更好训练的一种高尚方法

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Local minimum incorporated with premature saturation and slower convergence limits the performance of the Simple Genetic Algorithm based Neural Network (SGA-NN) algorithm. When the network reaches in local minima, the weights of the neural network become idle. To overcome this premature saturation and slow convergence a new neuro-genetic system named Apical Dominance based Genetic Algorithm based Neural Network (ADGA-NN) is proposed in this research work. As ‘Apical Dominance’ is a natural genetic event in plants, this algorithm may accelerate the training by updating the stationary weights of the neural network. ADGA-NN is experimented on five actual world's classification problems which are breast cancer, glass, Australian credit card, heart disease and thyroid problem. ADGA-NN surpasses SGA-NN concerning convergence rate and generalization capability.
机译:结合了过早饱和和较慢收敛的局部最小值限制了基于简单遗传算法的神经网络(SGA-NN)算法的性能。当网络达到局部最小值时,神经网络的权重变为空闲。为了克服这种过早的饱和和缓慢的收敛,在这项研究工作中提出了一种新的神经遗传系统,该系统称为基于Apical Dominance的基于遗传算法的神经网络(ADGA-NN)。由于“典型优势”是植物中的自然遗传事件,因此该算法可以通过更新神经网络的固定权重来加快训练速度。 ADGA-NN在五个实际的世界分类问题上进行了实验,这些问题是乳腺癌,玻璃杯,澳大利亚信用卡,心脏病和甲状腺问题。在收敛速度和泛化能力方面,ADGA-NN超过了SGA-NN。

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