输入对反向传播神经网络建模的影响

D. Drndarevic
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引用次数: 2

摘要

本文给出了采用反向传播学习算法的多层神经网络建模过程中输入量的影响。检查输入对输出误差的影响是通过比较有和没有给定输入的网络的输出误差来实现的。投入的重要性,即衡量投入对产出的影响,由最终权重值表示。输入值分布对近似误差的影响是通过确定输入组的输出误差来检验的。该分析最重要的结果是模型的优化和模型误差的减小,具有实际应用价值
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Influence of Inputs in Modelling by Backpropagation Neural Networks
An influence of inputs in modelling processes by multilayer neural networks with backpropagation learning algorithm is given in the paper. Examination of input influence on an output error is performed by comparing the output error of network with and without a given input. Inputs significance, i.e. a measure of inputs influence on outputs, is represented by the final weights value. Influence of the distribution of inputs value on an approximation error is examined by determination of the output error for groups of inputs. The most important results of this analysis are the model optimization and reduction of the model error, which is applicable in practice
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