利用遗传算法确定神经网络大小,提高泛化能力

G. Bebis, M. Georgiopoulos
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引用次数: 13

摘要

最近的理论结果支持减少神经网络中自由参数的数量(即权重)可以提高泛化。这些结果的重要性引发了许多方法的发展,这些方法试图确定给定问题的“适当”网络大小。尽管已经证明,大多数方法都能找到解决手头问题的小尺寸网络,但值得注意的是,这些网络的泛化能力尚未得到彻底的探索。在本文中,我们提出了遗传算法和权值修剪的耦合,目的是减少网络规模和提高泛化。我们方法的创新依赖于适应度函数的使用,该函数使用自适应参数来鼓励具有良好泛化性能和相对较小规模的网络的再现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving generalization by using genetic algorithms to determine the neural network size
Recent theoretical results support that decreasing the number of free parameters in a neural network (i.e., weights) can improve generalization. The importance of these results has triggered the development of many approaches which try to determine an "appropriate" network size for a given problem. Although it has been demonstrated that most of the approaches manage to find small size networks which solve the problem at hand, it is quite remarkable that the generalization capabilities of these networks have not been explored thoroughly. In this paper, we propose the coupling of genetic algorithms and weight pruning with the objective of both reducing network size and improving generalization. The innovation of our approach relies on the use of a fitness function which uses an adaptive parameter to encourage the reproduction of networks having good generalization performance and a relatively small size.
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