非展开单调系统的稳定性及其在递归神经网络中的应用

IF 2.4 Q2 AUTOMATION & CONTROL SYSTEMS IEEE Control Systems Letters Pub Date : 2024-06-19 DOI:10.1109/LCSYS.2024.3417171
Diego Deplano;Mauro Franceschelli;Alessandro Giua
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引用次数: 0

摘要

这封信表明,如果连续时间单调系统(在卡姆克-穆勒的意义上)的矢量场是连续可微分的,并且如果它们在对角加权无穷规范下是非膨胀的,那么它们的轨迹就会收敛到均衡点。与目前的文献趋势不同的是,该系统不要求是收缩的,而只要求是非展开的,因此允许存在多个平衡点。本文提供了易于检查的向量场条件,以验证系统的单调性和非膨胀性。为此,我们证明了非扩张性隐含于系统的亚均质性,即平移不变性属性的广义化。我们将这些结果应用于 RNN,从而为非收缩的非膨胀单调神经网络的状态轨迹收敛提供了充分条件。
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Stability of Nonexpansive Monotone Systems and Application to Recurrent Neural Networks
This letter shows that trajectories of continuous-time monotone systems (in the sense of Kamke-Muller) converge to equilibrium points if their vector field is continuously differentiable and if they are nonexpansive w.r.t. a diagonally weighted infinity norm. Differently from the current literature trend, the system is not required to be contractive but merely nonexpansive, thus allowing for multiple equilibrium points. Easy-to-check conditions on the vector field to verify that the system is both monotone and nonexpansive are provided. This is done by showing that nonexpansiveness is implied by subhomogeneity of the system, a generalization of the translation invariance property. We apply the results in the context of RNNs, thus providing sufficient conditions for convergence of the state trajectories of nonexpansive monotone neural networks that are not contractive.
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来源期刊
IEEE Control Systems Letters
IEEE Control Systems Letters Mathematics-Control and Optimization
CiteScore
4.40
自引率
13.30%
发文量
471
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