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CELLULAR NEURAL NETWORKS: A UNIFIED ANALYSIS OF THE STABILITY ISSUE

机译:蜂窝神经网络:对稳定性问题的统一分析

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A cellular neural network (CNN) is a recurrent neural network model. Like other models of this kind, the complete stability issue remains an open question. Leaving aside the unstable cyclic output case, the existence of stable outputs itself, known as the partial stability problem, ends up being a quite reliable guarantee for complete stability. Yet, no necessary and sufficient condition for partial stability has been established either. As a workaround, the past ten years provided several sufficient conditions. Some were ported from other neural network models, whereas others came out of various mathematical properties of CNNs. Consequently, the available criteria are disparate and hence, do not help finding any broader criterion. Based on a new viewpoint of the neighborhood consistency condition [1], this paper introduces a design principle of partial stability criteria for CNNs. Every of the currently established partial stability criteria, are then shown to be quite simple derivations of this principle, so opening a new way towards the complete stability problem.
机译:蜂窝神经网络(CNN)是一种经常性的神经网络模型。与这种模式一样,完全稳定性问题仍然是一个开放的问题。抛开不稳定的循环输出情况,稳定输出本身的存在,称为局部稳定性问题,最终是完全稳定性的相当可靠的保证。然而,已经建立了部分稳定性的必要和充分条件。作为一个解决方法,过去十年提供了几个充分的条件。有些人从其他神经网络模型移植,而其他人则从CNNS的各种数学特性中出来。因此,可用标准是不同的,因此,没有帮助找到任何更广泛的标准。基于邻域一致性条件的新观[1],本文介绍了CNN的部分稳定标准的设计原理。然后,每一个目前建立的部分稳定标准都被证明是这种原则的非常简单的推导,因此为完全稳定性问题开辟了一种新的方式。

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