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Sensitivity-based SCG-training of BP-networks*

机译:基于灵敏度的BP网络的SCG训练*

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摘要

Reliable neural networks applicable in practice require adequate generalization capabilities accompanied with a low sensitivity to noise in the processed data and a transparent network structure. In this paper, we will introduce a general framework for sensitivity control in neural networks of the back-propagation type (BP-networks) with an arbitrary number of hidden layers. Experiments performed so far confirm that sensitivity inhibition with an enforced internal representation significantly improves generalization. A transparent network structure formed during training supports an easy architecture optimization, too.
机译:在实践中适用的可靠神经网络需要足够的泛化能力,并且对处理后的数据的噪声敏感性较低,并且网络结构要透明。在本文中,我们将介绍一个反向传播类型的神经网络(BP网络)中具有任意数量的隐藏层的灵敏度控制的通用框架。到目前为止进行的实验证实,具有强制性内部表示的敏感性抑制可显着改善泛化性。培训期间形成的透明网络结构也支持轻松的体系结构优化。

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