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Designing associative memories implemented via recurrent neural networks for pattern recognition

机译:设计通过递归神经网络实现的联想记忆以进行模式识别

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In this paper a recurrent neural network is used as associative memory for pattern recognition. The goal of associative memory is to retrieve a stored pattern when enough information is presented in the network input. The network is training with twelve bipolar patterns to determine the corresponding weights. The weights are calculated by means of support vector machines training algorithms as the optimal hyperplane and soft margin hyperplane. Once the neural network is trained its performance is evaluated to retrieval stored patterns which correspond to characters encoded as bipolar vectors.
机译:在本文中,递归神经网络被用作模式识别的关联记忆。关联存储器的目标是在网络输入中提供足够的信息时检索存储的模式。网络正在训练十二个双极模式以确定相应的权重。权重通过支持向量机训练算法计算为最佳超平面和软边界超平面。一旦训练了神经网络,就可以评估其性能以检索存储的模式,该模式对应于编码为双极向量的字符。

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