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Study on general second-order neural units (SONUs)

机译:通用二阶神经单位(SONU)的研究

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In this paper, a general second-order neural unit (SONU) is developed using a new matrix form which can provide a general second-order combination of the input signals and synaptic weights. It is shown that, from the point of view of both the neural computing process and its learning algorithm, the linear combination neural units used widely in multilayer neural networks are only a subset of the proposed SONUs. Simulation studies for both the pattern classification and function approximation problems demonstrate that the learning and generalization abilities of the proposed SONUs are much superior to that of the linear combination neural units.
机译:在本文中,使用新的矩阵形式开发了通用的二阶神经单元(SONU),该矩阵可以提供输入信号和突触权重的通用的二阶组合。从神经计算过程及其学习算法的角度来看,在多层神经网络中广泛使用的线性组合神经单元只是所提出的SONU的一个子集。对模式分类和函数逼近问题的仿真研究表明,所提出的SONU的学习和泛化能力远优于线性组合神经单元的学习和泛化能力。

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