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Complex Valued Recurrent Neural Network: From Architecture to Training 被引量:1
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作者 Alexey Minin Alois Knoll hans-georg zimmermann 《Journal of Signal and Information Processing》 2012年第2期192-197,共6页
Recurrent Neural Networks were invented a long time ago, and dozens of different architectures have been published. In this paper we generalize recurrent architectures to a state space model, and we also generalize th... Recurrent Neural Networks were invented a long time ago, and dozens of different architectures have been published. In this paper we generalize recurrent architectures to a state space model, and we also generalize the numbers the network can process to the complex domain. We show how to train the recurrent network in the complex valued case, and we present the theorems and procedures to make the training stable. We also show that the complex valued recurrent neural network is a generalization of the real valued counterpart and that it has specific advantages over the latter. We conclude the paper with a discussion of possible applications and scenarios for using these networks. 展开更多
关键词 COMPLEX VALUED NEURAL NETWORKS COMPLEX VALUED System Identification RECURRENT NEURAL NETWORKS COMPLEX VALUED RECURRENT NEURAL NETWORKS
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