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A new stability condition for discrete time linear threshold recurrent neural networks

机译:离散时间线性阈值递归神经网络的新稳定性条件

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This paper discusses the stability condition for discrete time recurrent neural networks (RNNs) with linear threshold (LT) neurons. In the existing research literature [1], the LT RNN in synchronous update mode is completely convergent if I-W is a copositive matrix. However, this condition also requires that W should be symmetrical. Here, a new stability condition is presented, which extends previous theoretical result first published in [1], and allows LT RNN to be stable when W is unsymmetrical in some cases. Simulation results are used to illustrate the theory.
机译:本文讨论了具有线性阈值(LT)神经元的离散时间递归神经网络(RNN)的稳定性条件。在现有的研究文献中[1],如果I-W是一个正定矩阵,则同步更新模式下的LT RNN是完全收敛的。但是,此条件还要求W应该是对称的。在这里,提出了一个新的稳定性条件,它扩展了先前在[1]中首次发表的理论结果,并允许在某些情况下当W不对称时LT RNN是稳定的。仿真结果说明了该理论。

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