Effect of multi-hidden-layer structure on performance of BP neural network: Probe

Ken Chen, Shoujian Yang, C. Batur
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引用次数: 8

Abstract

As a multi-layer forwarding network, the back propagation neural network (BPNN) with manifold derived structures has been most widely used in artificial intelligence applications. Based on the given non-linear system and the BPNNs of varying internal structures, this paper quantitatively reports the findings in the correlation between the number of hidden layers and the BPNN performance. The selection of learning rate is also investigated using the 3-layer BPNN and the same non-linear system. Through the simulation results in this probe it finds that the BPNN performance is not improved notably or even degraded with the increase of hidden layers, and 3-layer (or 1-1-1) BPNN is identified as the best performer.
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多隐层结构对BP神经网络性能的影响:探针
具有流形派生结构的反向传播神经网络(BPNN)作为一种多层转发网络,在人工智能应用中应用最为广泛。基于给定的非线性系统和不同内部结构的BPNN,定量报告了隐藏层数与BPNN性能之间的关系。利用三层bp神经网络和同样的非线性系统,研究了学习率的选择。通过本探针的仿真结果发现,随着隐藏层的增加,BPNN的性能没有明显提高,甚至会下降,3层(或1-1-1)的BPNN被认为是性能最好的。
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