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Absolute exponential stability of neural networks with a generalclass of activation functions

机译:具有通用激活函数类的神经网络的绝对指数稳定性

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The authors investigate the absolute exponential stability (AEST) of neural networks with a general class of partially Lipschitz continuous (defined in Section II) and monotone increasing activation functions. The main obtained result is that if the interconnection matrix T of the network system satisfies that -T is an H-matrix with nonnegative diagonal elements, then the neural network system is absolutely exponentially stable (AEST); i.e., that the network system is globally exponentially stable (GES) for any activation functions in the above class, any constant input vectors and any other network parameters. The obtained AEST result extends the existing ones of absolute stability (ABST) of neural networks with special classes of activation functions in the literature
机译:作者研究了具有部分Lipschitz连续(在第二节中定义)和单调递增激活函数的通用类的神经网络的绝对指数稳定性(AEST)。得到的主要结果是,如果网络系统的互连矩阵T满足-T是具有非负对角线元素的H矩阵,则神经网络系统是绝对指数稳定的(AEST);即,对于上述类别中的任何激活功能,任何恒定输入向量和任何其他网络参数,网络系统都是全局指数稳定的(GES)。获得的AEST结果扩展了文献中具有特殊类别的激活函数的现有神经网络的绝对稳定性(ABST)

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