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A brief discussion on moderatism based local gradient learning rules

机译:简论基于适度性的局部梯度学习规则

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Moderatism [Y. Okabe et al., 1988], which is a learning rule for ANNs, is based on the principle that individual neurons and neural nets as a whole try to sustain a "moderate" level in their input and output signals. In this way, a close mutual relationship with the outside environment is maintained. In this paper, two potential moderatism-based local, gradient learning rules are proposed. Then, a pattern learning experiment is performed to compare the learning performances of these two learning rules, the error based weight update (EBWU) rule [Tanvir Islam, M et al., December 2001][Tanvir Islam, M et al., September 2001], and error backpropagation [Bishop, CM et al., 1995].
机译:主持人[Y. Okabe等人,[1988],这是ANN的学习规则,它基于以下原则:单个神经元和神经网络作为一个整体,试图在其输入和输出信号中维持“中等”水平。以这种方式,保持了与外部环境的紧密相互关系。本文提出了两种基于适度论的局部梯度学习规则。然后,进行模式学习实验以比较这两个学习规则(基于错误的权重更新(EBWU)规则)的学习效果[Tanvir Islam,M等,2001年12月] [Tanvir Islam,M等,9月2001]和错误反向传播[Bishop,CM et al。,1995]。

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