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Hysteretic Neural Network and Its Applications in Associative Memory

机译:滞后神经网络及其在关联记忆中的应用

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A hysteretic neural network is proposed based on the associative memory principle of Hopfield neural network. The hysteretic character make the neurons in the hysteretic neural network have better holding property to the original states, which decreases the possibility of changing the states mistakenly, and enhances the accuracy and the successful rate of associative memory. Furthermore, a learning algorithm for multi-values patterns associative memory is proposed based Hebb rules. The weight matrix is designed dynamically according to the sample patterns and input pattern. Using the learning algorithm, the hysteretic neural network can realize any multi-values patterns associative memory. The simulation results prove the validity of the algorithm.
机译:基于Hopfield神经网络的关联存储器原理提出了一种滞后神经网络。滞后性角质使滞后神经网络中的神经元对原始状态具有更好的持有财产,这减少了错误地改变各国的可能性,并提高了联想记忆的准确性和成功率。此外,基于HEBB规则,提出了一种用于多值模式关联存储器的学习算法。重量矩阵根据样本模式和输入图案动态设计。使用学习算法,滞后神经网络可以实现任何多值模式关联存储器。仿真结果证明了算法的有效性。

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