带有图形正则项的西格玛-皮-西格玛神经网络模型

Qianru Huang, Qingmei Dong, Yunlong Liu, Deqing Ji, Qinwei Fan
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引用次数: 0

摘要

近年来,Sigma-Pi-Sigma 神经网络(SPSNN)作为一种特殊的高阶神经网络,因其收敛速度快、逼近能力强而受到广泛关注。然而,隐层神经元数量不当也会导致模型欠拟合或过拟合,从而影响模型的性能和泛化能力。因此,我们提出了一种具有图正则性的 Sigma-Pi-Sigma 神经网络,即在网络中加入图正则项。结果表明,所提出的算法在训练精度、测试精度和效率方面都表现良好。
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A Sigma-Pi-Sigma Neural Network Model with Graph Regularity Term
In recent years, Sigma-Pi-Sigma neural network (SPSNN) as a special kind of higher-order neural network has attracted wide attention for its fast convergence speed and good approximation ability. However, an inappropriate number of hidden layer neurons may also lead to model underfitting or overfitting, which affects the performance and generalization ability of the model. Therefore, we propose a Sigma-Pi-Sigma neural network with graph regularity by adding a graph regularity term to the network. The results show that the proposed algorithm performs well in terms of training accuracy, testing accuracy and efficiency.
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