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A multilayer complex neural network training algorithm and its application in adaptive equalization

TN; In this paper, the layer-by-layer optimizing algorithm for training multilayer neural network is extended for the case of a multilayer neural network whose inputs, weights, and activation functions are all complex. The updating of the weights of each layer in the network is based on the recursiv...

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Bibliographic Details
Published in:Journal of electronics (China) 2001-10, Vol.18 (4), p.321-329
Main Authors: Li, Chunguang, Liao, Xiaofeng, Wu, Zhongfu, Yu, Juebang
Format: Article
Language:English
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Summary:TN; In this paper, the layer-by-layer optimizing algorithm for training multilayer neural network is extended for the case of a multilayer neural network whose inputs, weights, and activation functions are all complex. The updating of the weights of each layer in the network is based on the recursive least squares method. The performance of the proposed algorithm is demonstrated with application in adaptive complex communication channel equalization.
ISSN:0217-9822
1993-0615
DOI:10.1007/s11767-001-0046-z