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Some Implications of System Dynamics Analysis of Discrete-Time Recurrent Neural Networks for Learning Algorithms Design

机译:自由时间经常性神经网络学习算法设计的系统动力学分析的一些影响

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It is not clear so far what the implications of bifurcations in Discrete-Time Recurrent Neural Networks dynamics are with respect to learning algorithms. Previous studies discussed different phenomena in a general purpose framework, and here we are going to discuss in more detail. We perform an analysis of the dynamics of a neuron with feedback in order to find the different behaviors that it shows depending on the magnitude of the offset weight, the input weight and the feedback weight. We calculate the bifurcation manifolds that show the regions where the neuron behavior changes. We discuss the implications that these findings can have for the design of DTRNN learning algorithms.
机译:到目前为止,目前尚不清楚分叉在离散时间经常性神经网络动态中的影响是什么相对于学习算法。以前的研究在通用框架中讨论了不同现象,在这里我们将更详细地讨论。我们对具有反馈的神经元的动态进行了分析,以便找到根据偏移重量的大小,输入重量和反馈权重的不同行为。我们计算出显示神经元行为变化的区域的分叉歧管。我们讨论了这些发现对于DtrnN学习算法设计的含义。

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