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An Iterative Incremental Learning Algorithm for Complex-Valued Hopfield Associative Memory

机译:复值Hopfield联想记忆的迭代增量学习算法

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This paper discusses a complex-valued Hopfield associative memory with an iterative incremental learning algorithm. The mathematical proofs derive that the weight matrix is approximated as a weight matrix by the complex-valued pseudo inverse algorithm. Furthermore, the minimum number of iterations for the learning sequence is defined with maintaining the network stability. From the result of simulation experiment in terms of memory capacity and noise tolerance, the proposed model has the superior ability than the model with a complex-valued pseudo inverse learning algorithm.
机译:本文讨论了具有迭代增量学习算法的复值Hopfield关联记忆。数学证明推导,通过复值伪逆算法将权重矩阵近似为权重矩阵。此外,在保持网络稳定性的同时定义了学习序列的最小迭代次数。从存储容量和噪声容忍度的仿真实验结果来看,所提出的模型比具有复值伪逆学习算法的模型具有更好的能力。

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