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Hidden Node Pruning of Multilayer Perceptrons Based on Redundancy Reduction

机译:基于冗余减少的多层感知器隐藏节点修剪

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Among many approaches to choosing the proper size of neural networks, one popular approach is to start with an oversized network and then prune it to a smaller size so as to attain better performance with less computational complexity. In this paper, a new hidden node pruning method is proposed based on the redundancy reduction among hidden nodes. The redundancy information is given by correlation coefficients among hidden nodes and this can save computational complexity. Experimental results demonstrate the effectiveness of the proposed method.
机译:在选择适当大小的神经网络的许多方法中,一种流行的方法是从超大型网络开始,然后将其修剪成较小的尺寸,从而以较少的计算复杂性获得更好的性能。本文提出了一种基于隐藏节点间冗余减少的新的隐藏节点修剪方法。冗余信息由隐藏节点之间的相关系数给出,这样可以节省计算复杂度。实验结果证明了该方法的有效性。

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