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Learning Associative Memories by Error Backpropagation

机译:通过错误反向传播学习联想记忆

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摘要

In this paper, a method for the design of Hopfield networks, bidirectional and multidirectional associative memories with asymmetric connections, is proposed. The given patterns can be assigned as locally asymptotically stable equilibria of the network by training a single-layer feedforward network. It is shown that the robustness in respect to acceptable noise in the input of the constructed networks is enhanced as the memory dimension increases and weakened as the number of the stored patterns grows. More important is that the remembered patterns are not necessarily of binary forms. Neural associative memories for storing gray-level images are constructed based on the proposed method. Numerical simulations show that the proposed method is efficient for the design of Hopfield-type recurrent neural networks.
机译:本文提出了一种具有非对称连接的Hopfield网络,双向和多向联想存储器的设计方法。通过训练单层前馈网络,可以将给定的模式分配为网络的局部渐近稳定均衡。可以看出,随着存储尺寸的增加,相对于所构建网络的输入中可接受的噪声的鲁棒性增强,而随着所存储的模式数量的增加,鲁棒性也随之减弱。更重要的是,记住的模式不一定是二进制形式。基于该方法构造了用于存储灰度图像的神经联想存储器。数值模拟表明,该方法对于Hopfield型递归神经网络的设计是有效的。

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