Implementation of an Associative Memory using a Restricted Hopfield Network

T. Yeap
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Abstract

A trainable analog restricted Hopfield Network is presented in this paper. It consists of two layers of nodes, visible and hidden nodes, connected by weighted directional paths forming a bipartite graph with no intralayer connection. An energy or Lyapunov function was derived to show that the proposed network will converge to stable states. The proposed network can be trained using either the modified SPSA or BPTT algorithms to ensure that all the weights are symmetric. Simulation results show that the presence of hidden nodes increases the network’s memory capacity. Using EXOR as an example, the network can be trained to be a dynamic classifier. Using A, U, T, S as training characters, the network was trained to be an associative memory. Simulation results show that the network can perform perfect re-creation of noisy images. Its recreation performance has higher noise tolerance than the standard Hopfield Network and the Restricted Boltzmann Machine. Simulation results also illustrate the importance of feedback iteration in implementing associative memory to re-create from noisy images.
基于受限Hopfield网络的联想记忆实现
提出了一种可训练的模拟受限Hopfield网络。它由两层节点组成,可见节点和隐藏节点,通过加权方向路径连接,形成一个没有层内连接的二部图。导出了一个能量或李雅普诺夫函数,以表明所提出的网络将收敛到稳定状态。所提出的网络可以使用改进的SPSA或BPTT算法进行训练,以确保所有权重都是对称的。仿真结果表明,隐藏节点的存在增加了网络的内存容量。以EXOR为例,该网络可以被训练成一个动态分类器。以A、U、T、S为训练字符,训练网络为联想记忆。仿真结果表明,该网络能较好地再现噪声图像。其再现性能比标准Hopfield网络和受限玻尔兹曼机具有更高的噪声容忍度。仿真结果也说明了反馈迭代在实现由噪声图像重建的联想记忆中的重要性。
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