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Synthesization of Multi-valued Associative High-Capacity Memory Based on Continuous Networks with a Class of Non-smooth Linear Nondecreasing Activation Functions

机译:基于具有一类非光滑线性非递减激活函数的连续网络的多值关联大容量存储器的合成

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摘要

This paper presents a novel design method for multi-valued auto-associative and heteroassociative memories based on a continuous neural network (CNN) with a class of nonsmooth linear nondecreasing activation functions. The proposed CNN is robust in terms of the design parameter selection, which is dependent on a set of inequalities rather than the learning procedure. Some globally exponentially stable criteria are obtained to ensure multi-valued associative patterns to be retrieved accurately. The methodology, by generating CNN where the input data are fed via external inputs, avoids spurious memory patterns and achieves (2r) n storage capacity. These analytic results are applied to the associative memory of images. The fault-tolerant capability and the effectiveness are validated by illustrative experiments.
机译:本文提出了一种基于具有一类非光滑线性非递减激活函数的连续神经网络(CNN)的多值自联想和异联想存储器的新颖设计方法。所提出的CNN在设计参数选择方面具有鲁棒性,该设计参数选择取决于一组不等式而不是学习过程。获得一些全局指数稳定的准则,以确保准确检索多值关联模式。该方法通过生成CNN,其中输入数据通过外部输入进行馈送,从而避免了伪存储模式,并实现了(2r)n的存储容量。这些分析结果被应用于图像的联想记忆。容错能力和有效性通过说明性实验得到验证。

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