前馈神经网络学习新方法的研究

Jinghong Wang, Bi Li, Chenguang Liu, Jiaomin Liu
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引用次数: 2

摘要

本文讨论了稀疏前馈神经网络,即如何确定和删除网络中冗余的神经元和连接。首先给出了前馈神经网络的数学定义,然后介绍了前馈神经网络的稀疏算法和学习算法的偏序和拓扑序。在此基础上,提出了冗余神经元和连接的判断依据。根据自配置和自调整策略,提出了适用于前馈神经网络的自配置和自调整算法。实验结果表明,上述稀疏算法不仅可以有效地删除网络中冗余的神经元和连接,而且可以提高网络的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research of New Learning Method of Feedforward Neural Network
This paper discussed the sparsed feed-forward neural network, namely, how to determine and delete the redundant neurons and connections in the network. To begin with, the author gives the mathematical definition of feed-forward neural network, and then introduces the partial and topological order to the sparsed algorithm and the learning algorithm of the feed-forward neural network. As a result, the author puts forward the judgement basis of the redundant neurons and connections. According to the self-configuring and self-adjusting tactics, the paper present self-configuring and self-adjusting algorithms which is suitable for feed-forward neural network. The result of the experiment indicates that the above-mentioned sparsed algorithm can not only delete the redundant neurons and connections in the network effectively, but also improve the performance of the network.
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