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A New Adaptive Genetic Neural Network Based Active Evolution

机译:基于主动进化的新型自适应遗传神经网络

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摘要

Neural network's constructions and weights are one aspect of the basic questions. A kind of artificial neural network method based on an active evolution genetic algorithm is proposed. Introduce the algorithm's basic idea. Active evolution genetic algorithm is combined the active evolution algorithm which is advantaged both overcoming the local optimized value and keeping rapidly convergence. Save time and space for the construction of new network, improve the output's error precision and find the better way to solve how to build the network's weights and structures at the beginning. The experiment results show that the algorithm is superior to simple genetic neural network algorithm with higher convergent speed, optimization and practical value of structures and weights, and improves network's forecasting accuracy.
机译:神经网络的结构和权重是基本问题的一方面。提出了一种基于主动进化遗传算法的人工神经网络方法。介绍算法的基本思想。主动进化遗传算法与主动进化算法相结合,具有克服局部最优值和保持快速收敛的优点。节省了构建新网络的时间和空间,提高了输出的错误精度,并找到了一种更好的方法来解决从一开始就构建网络的权重和结构。实验结果表明,该算法优于简单遗传神经网络算法,具有收敛速度快,结构权重优化,实用价值高等优点,提高了网络的预测精度。

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