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Regularizers for fault tolerant multilayer feedforward networks

机译:容错多层前馈网络的正则器

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Fault tolerance is an important issue for multilayer feedforward networks (MFNs). However, in the classical training approach for open node fault and open weight fault, we should consider many potential faulty networks. Clearly, if the number of faulty networks considered in the objective function is large, this training approach would be very time consuming. This paper derives two objective functions for attaining fault tolerant MFNs. One objective function is designed for handling open node fault while another one is designed for handling open weight fault. With the linearization technique, each of these two objective functions can be decomposed into two terms, the training error and a simple regularization term. In our approach, the objective functions are computationally simple. Hence the conventional backpropagation algorithm can be simply applied to handle these fault tolerant objective functions.
机译:容错是多层前馈网络(MFN)的重要问题。然而,在针对开放节点故障和开放权重故障的经典训练方法中,我们应该考虑许多潜在的故障网络。显然,如果目标函数中考虑的故障网络数量很大,则这种训练方法将非常耗时。本文推导了两个实现容错MFN的目标函数。一个目标函数被设计为处理开放节点故障,而另一目标函数被设计为处理开放权重故障。使用线性化技术,这两个目标函数中的每一个都可以分解为两个项,即训练误差和简单的正则项。在我们的方法中,目标函数在计算上很简单。因此,传统的反向传播算法可以简单地应用于处理这些容错目标函数。

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