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A neural network with a single recurrent unit for associative memories based on linear optimization

机译:基于线性优化的具有单个循环单元的联想记忆神经网络

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摘要

Recently, some continuous-time recurrent neural networks have been proposed for associative memories based on optimizing linear or quadratic programming problems. In this paper, a simple and efficient neural network with a single recurrent unit is proposed for realizing associative memories. Compared with the existing neural networks for associative memories, the main advantage of the proposed model is that it has only one recurrent unit, which lowers the model complexity by the greatest extent. In the proposed neural network, each prototype pattern is stored in the connection weights between the input and hidden layers. In addition, the advanced performance of the proposed network is demonstrated by means of simulations of three numerical examples.
机译:最近,基于优化线性或二次编程问题,已经提出了一些用于联想存储器的连续时间递归神经网络。本文提出了一种简单有效的具有单个递归单元的神经网络来实现联想记忆。与现有的用于联想记忆的神经网络相比,该模型的主要优势在于它只有一个循环单元,从而最大程度地降低了模型的复杂度。在提出的神经网络中,每个原型模式都存储在输入层和隐藏层之间的连接权重中。此外,通过对三个数值示例的仿真,证明了所建议网络的先进性能。

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