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Robustness analysis of a class of discrete-time recurrent neuralnetworks under perturbations

机译:扰动下一类离散时间递归神经网络的鲁棒性分析

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A robustness analysis is conducted for a large class of discrete-time recurrent neural networks for associative memories under perturbations of system parameters. The present paper aims to give an answer to the following question. Given a discrete-time neural network with specified stable memories (specified asymptotically stable equilibria), under what conditions will a perturbed model of the discrete-time neural network possess stable memories that are close (in distance) to the stable memories of the unperturbed discrete-time neural network model? Robustness stability results for perturbed discrete-time neural network models are established and conditions are obtained for the existence of asymptotically stable equilibria of the perturbed discrete-time neural network models which are near the asymptotically stable equilibria of the original unperturbed neural networks. In the present results, quantitative estimates (explicit estimates of bounds) are given for the distance between the corresponding equilibrium points of the unperturbed and perturbed discrete-time neural network models considered herein
机译:针对系统参数扰动下的关联记忆的大量离散时间递归神经网络进行了鲁棒性分析。本文旨在为以下问题提供答案。给定具有指定稳定内存(指定渐近稳定均衡)的离散时间神经网络,离散时间神经网络的扰动模型在什么条件下将具有与未扰动离散神经元的稳定记忆接近(距离)的稳定记忆神经网络模型?建立了扰动离散神经网络模型的鲁棒稳定性结果,并为存在条件的渐近稳定神经网络模型提供了渐近稳定平衡的条件,其接近原始无扰动神经网络的渐近稳定平衡。在当前结果中,给出了本文考虑的无扰动和扰动离散时间神经网络模型的相应平衡点之间的距离的定量估计(界限的显式估计)

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