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A new design method for the complex-valued multistate Hopfield associative memory

机译:复值多状态Hopfield关联记忆的新设计方法

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摘要

A method to store each element of an integral memory set M /spl sub/ {1,2,...,K}/sup n/ as a fixed point into a complex-valued multistate Hopfield network is introduced. The method employs a set of inequalities to render each memory pattern as a strict local minimum of a quadratic energy landscape. Based on the solution of this system, it gives a recurrent network of n multistate neurons with complex and symmetric synaptic weights, which operates on the finite state space {1,2,...,K}/sup n/ to minimize this quadratic functional. Maximum number of integral vectors that can be embedded into the energy landscape of the network by this method is investigated by computer experiments. This paper also enlightens the performance of the proposed method in reconstructing noisy gray-scale images.
机译:介绍了一种将整数存储集M / spl sub / {1,2,...,K} / sup n /作为固定点存储到复值多状态Hopfield网络中的方法。该方法采用一组不等式来将每个存储模式呈现为二次能态的严格局部最小值。基于该系统的解决方案,它给出了具有复杂和对称突触权重的n个多状态神经元的递归网络,该网络在有限状态空间{1,2,...,K} / sup n /上运行,以最小化该二次方功能。通过计算机实验研究了可以通过这种方法嵌入网络能量格局的最大积分向量数。本文还启发了该方法在重建噪声灰度图像中的性能。

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