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Abstract:
For the problem that the fully coupled BP neural network suffers the slow convergence rate to solve the large scale complex problems, a structure model of function-dividing BP neural network architecture is presented. By using the physical characteristics of the RBF neurons, the input sample space is decomposed, and different sub-samples space is sent to different sub-module of BP neural network to learn automatically. Compared with the fully coupled BP neural network, the searching space of weight in the learning process of neural network is reduced, the learning speed and network's generalization performance are improved, and the characteristics of the human brain in the learning proces of knowledge accumulation are reflected. Experiments of 3D Mexican hat function approximation and two-spiral classification show that the neural network of function-dividing BP neural network can solve the problem that the fully coupled BP neural network can not solve perfectly.
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Source :
Control and Decision
ISSN: 1001-0920
Year: 2011
Issue: 11
Volume: 26
Page: 1659-1664
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SCOPUS Cited Count:
ESI Highly Cited Papers on the List: 0 Unfold All
WanFang Cited Count:
Chinese Cited Count:
30 Days PV: 4
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