On the optimal number of hidden nodes in a neural network

N. Wanas, G. Auda, M. Kamel, F. Karray
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引用次数: 140

Abstract

In this study we show, empirically, that the best performance of a neural network occurs when the number of hidden nodes is equal to log(T), where T is the number of training samples. This value represents the optimal performance of the neural network as well as the optimal associated computational cost. We also show that the measure of entropy in the hidden layer not only gives a good foresight to the performance of the neural network, but can be used as a criteria to optimize the neural network as well. This can be achieved by minimizing the network entropy (i.e. maximizing the entropy in the hidden layer) as a means of modifying the weights of the neural network.
神经网络中隐藏节点的最优数量
在这项研究中,我们通过经验证明,当隐藏节点的数量等于log(T)时,神经网络的最佳性能出现,其中T是训练样本的数量。该值表示神经网络的最佳性能以及最佳的相关计算成本。我们还表明,隐层熵的度量不仅可以很好地预测神经网络的性能,而且可以作为优化神经网络的标准。这可以通过最小化网络熵(即最大化隐藏层的熵)作为修改神经网络权重的一种手段来实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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