A kind of BP neural network algorithm based on grey interval

INTERNATIONAL JOURNAL OF SYSTEMS SCIENCE(2011)

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摘要
In order to improve the learning ability of a forward neural network, in this article, we incorporate the feedback back-propagation (FBBP) and grey system theory to consider the learning and training of a neural network new perspective. By reducing the input grey degree we optimise the input of the neural network to make it more rational for learning and training of neural networks. Simulation results verified the efficiency of the proposed algorithm by comparing its performance with that of FBBP and classic back-propagation (BP). The results showed that the proposed algorithm has the characteristics of fast training and strong ability of generalisation and it is an effective learning method.
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关键词
input grey degree,feedback back-propagation,bp neural network algorithm,neural network,grey interval,new perspective,fast training,classic back-propagation,strong ability,grey system theory,proposed algorithm,effective learning method,back propagation,generalisation
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