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A binary three layered neural network with switched error perturbation and reiterative learning utilizing the generalization property

机译:利用泛化属性的交换误差扰动和重复学习的二进制三层神经网络

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We propose a binary 3-layered neural network (BNN) using a novel learning technique in which rapid convergence can be reliably achieved by a perturbation of the unit output errors in an output layer in polarity and magnitude, and a very high generlaization can also be achieved through successive training by adjusting the amount of the error perturbation after convergence.
机译:我们使用新的学习技术提出二进制3层神经网络(BNN),其中通过在极性和幅度的输出层中的单元输出误差扰动可以可靠地实现快速收敛,并且也可以是非常高的通用化通过连续训练通过调整收敛后的错误扰动量来实现。

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