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Generalization ability of fault tolerant feedforward neural nets

机译:容错前馈神经网的概​​括能力

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Obtaining the maximum generalization and fault tolerance has been an important issue in the design of feedforward artificial neural networks (FFANNs). In previous work we introduced a method for ensuring the fault tolerance capabilities of FFANNs. We also introduced a detached model for fault tolerance, this model was shown to be realistic and appropriate for emulating faults that arise in FFANNs hardware implementation. In this paper we discuss the generalization ability of the fault tolerant FFANNs produced by our new training method. By introducing a method for measuring the generalization ability, this works shows that the network trained by our method has better generalization ability than that trained by conventional backpropagation technique.
机译:获得最大泛化和容错是前馈人工神经网络(FFANN)的设计中的一个重要问题。在以前的工作中,我们介绍了一种确保FFanns的容错能力的方法。我们还介绍了一种用于容错的分离模型,该模型被证明是逼真的,适用于在FFanns硬件实现中产生的故障。在本文中,我们讨论了我们的新培训方法产生的容错FFANN的泛化能力。通过引入用于测量泛化能力的方法,这项工作表明,我们的方法训练的网络具有比传统反向技术训练的更好的泛化能力。

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