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A new supervised learning algorithm for multilayered and interconnected neural networks

机译:多层和互连神经网络的一种新的监督学习算法

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摘要

A learning algorithm is presented for supervised learning of multilayered and interconnected neural networks without using a gradient method. First, fictitious teacher signals for the outputs of each hidden unit are algebraically determined by an error backpropagation (EBP) method. Then, the weight parameters are determined by using an exponentially weighted least squares (EWLS) method. This is called the EBP-EWLS algorithm for a multilayered neural network. For an interconnected neural network, the mathematical description of the neural network is arranged in the form for which the EBP-EWLS algorithm can be applied. Simulation studies have verified the proposed technique.
机译:提出了一种学习算法,用于在不使用梯度法的情况下对多层和互连的神经网络进行有监督的学习。首先,通过误差反向传播(EBP)方法代数确定每个隐藏单元输出的虚拟教师信号。然后,通过使用指数加权最小二乘(EWLS)方法确定权重参数。这称为用于多层神经网络的EBP-EWLS算法。对于互连的神经网络,以可以应用EBP-EWLS算法的形式排列神经网络的数学描述。仿真研究已经验证了所提出的技术。

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