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Application of decision feedback recurrent neural network with real-time recurrent algorithm

机译:实时递归算法在决策反馈递归神经网络中的应用

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The recurrent neural network is a kind of neural network with one or more feedback loops. We may have feedback from the output neurons of the multilayer to the input layer. Yet another possible form of feedback is from the hidden neurons of the network to the input layer. In this paper, we propose a channel equalization scheme using a decision feedback recurrent neural network, which has feedback loops from both the hidden layer and the decision part, with real-time recurrent network. Simulation results show that the proposed scheme outperforms the recurrent neural network that only has feedbacks loops from the hidden layer.
机译:递归神经网络是一种具有一个或多个反馈回路的神经网络。我们可能会有从多层输出神经元到输入层的反馈。反馈的另一种可能形式是从网络的隐藏神经元到输入层。在本文中,我们提出了一种使用决策反馈循环神经网络的信道均衡方案,该方案具有实时层递归网络,该反馈网络具有来自隐藏层和决策部分的反馈回路。仿真结果表明,该方案优于仅具有来自隐藏层反馈回路的递归神经网络。

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