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Design techniques for the control of errors in backpropagation neural networks

机译:反向传播神经网络中的错误控制设计技术

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Abstract: A significant problem in the design and construction of an artificial neural network for function approximation is limiting the magnitude and variance of errors when the network is used in the field. Network errors can occur when the training data does not faithfully represent the required function due to noise or low sampling rates, when the network's flexibility does not match the variability of the data, or when the input data to the resultant network is noisy. This paper reports on several experiments whose purpose was to rank the relative significance of these error sources and thereby find neural network design principles for limiting the magnitude and variance of network errors.!9
机译:摘要:在用于函数逼近的人工神经网络的设计和构建中,一个重要的问题是限制在现场使用该网络时误差的大小和方差。当训练数据由于噪声或低采样率而不能如实地表示所需功能,网络的灵活性与数据的可变性不匹配或输入到最终网络的数据有噪声时,可能会发生网络错误。本文报告了一些实验,目的是对这些误差源的相对重要性进行排序,从而找到用于限制网络误差的大小和方差的神经网络设计原理。9

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