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首页> 外文期刊>IEEE Transactions on Neural Networks >Sensitivity of feedforward neural networks to weight errors
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Sensitivity of feedforward neural networks to weight errors

机译:前馈神经网络对重量误差的敏感性

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An analysis is made of the sensitivity of feedforward layered networks of Adaline elements (threshold logic units) to weight errors. An approximation is derived which expresses the probability of error for an output neuron of a large network (a network with many neurons per layer) as a function of the percentage change in the weights. As would be expected, the probability of error increases with the number of layers in the network and with the percentage change in the weights. The probability of error is essentially independent of the number of weights per neuron and of the number of neurons per layer, as long as these numbers are large (on the order of 100 or more).
机译:对Adaline元素(阈值逻辑单元)的前馈分层网络对重量误差的敏感性进行了分析。得出近似值,该近似值表示权重变化百分比随大型网络(每层具有许多神经元的网络)的输出神经元的错误概率。可以预期,错误的概率会随着网络中层数的增加以及权重的百分比变化而增加。错误概率基本上与每个神经元的权重数和每层神经元的数无关,只要这些数字很大(大约100个或更多)即可。

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