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通过在非常长的染色体上运行的遗传算法来训练神经网络。

Training neural networks by means of genetic algorithms working on very long chromosomes.

作者信息

Korning P G

机构信息

Computer Science Department, Aarhus University, Denmark.

出版信息

Int J Neural Syst. 1995 Sep;6(3):299-316. doi: 10.1142/s0129065795000226.

Abstract

In the neural network/genetic algorithm community, rather limited success in the training of neural networks by genetic algorithms has been reported. In a paper by Whitley et al. (1991), he claims that, due to "the multiple representations problem", genetic algorithms will not effectively be able to train multilayer perceptrons, whose chromosomal representation of its weights exceeds 300 bits. In the following paper, by use of a "real-life problem", known to be non-trivial, and by a comparison with "classic" neural net training methods, I will try to show, that the modest success of applying genetic algorithms to the training of perceptrons, is caused not so much by the "multiple representations problems" as by the fact that problem-specific knowledge available is often ignored, thus making the problem unnecessarily tough for the genetic algorithm to solve. Special success is obtained by the use of a new fitness function, which takes into account the fact that the search performed by a genetic algorithm is holistic, and not local as is usually the case when perceptrons are trained by traditional methods.

摘要

在神经网络/遗传算法领域,据报道,使用遗传算法训练神经网络所取得的成功相当有限。在惠特利等人(1991年)的一篇论文中,他声称,由于“多重表示问题”,遗传算法无法有效地训练多层感知器,其权重的染色体表示超过300位。在接下来的论文中,通过使用一个已知具有挑战性的“实际问题”,并与“经典”神经网络训练方法进行比较,我将试图表明,将遗传算法应用于感知器训练所取得的有限成功,与其说是由“多重表示问题”导致的,不如说是因为可用的特定问题知识常常被忽视,从而使问题对遗传算法来说变得不必要地困难。通过使用一种新的适应度函数获得了特别的成功,该函数考虑到遗传算法所执行的搜索是整体性的,而不像传统方法训练感知器时通常那样是局部性的。

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