人工神经网络神经进化合成的微调机制

Serhii Leoshcheko, A. Oliinyk, S. Subbotin, Mykyta Zaiko
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引用次数: 0

摘要

在复杂拓扑(例如,递归神经网络:RNN和深度神经网络:DNN)的人工神经网络(ANN)的复杂合成(结构和参数)过程中,神经进化是一种很有前途的方法。毕竟,神经进化综合方法允许通过逐渐增加、增加复杂性和改变网络参数,在较少外部专家参与的情况下获得适当的神经模型拓扑和参数。然而,神经进化合成具有显著的执行时间。有时也存在当地极端分子的问题。这就是为什么迫切的任务是开发可以在合成过程中逐点引入的修改,以克服所列出的缺点并改善使用这些方法的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mechanisms of Fine Tuning of Neuroevolutionary Synthesis of Artificial Neural Networks
During performing complex synthesis (structural and parametric) of artificial neural networks (ANN) of complex topologies (for example, recurrent neural networks: RNN and deep neural networks: DNN), neuroevolution is a promising approach. After all, methods of neuroevolution synthesis allow to obtain the appropriate topology and parameters of the neuromodel with less involvement of an external expert, by gradually increasing, increasing the complexity and changing the network parameters. However, neuroevolution synthesis has a significant execution time. There are also sometimes problems with local extremes. That’s why the urgent task is to develop modifications that can be introduced point-by-point during the synthesis process in order to overcome disadvantages that were listed and improve results of using such methods.
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