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A Generalized Data Representation and Training-Performance Analysis for Deep Learning-Based Communications Systems (1806.10333v2)

Published 27 Jun 2018 in cs.IT and math.IT

Abstract: Deep learning (DL)-based autoencoder is a potential architecture to implement end-to-end communication systems. In this letter, we first give a brief introduction to the autoencoder-represented communication system. Then, we propose a novel generalized data representation (GDR) aiming to improve the data rate of DL-based communication systems. Finally, simulation results show that the proposed GDR scheme has lower training complexity, comparable block error rate performance and higher channel capacity than the conventional one-hot vector scheme. Furthermore, we investigate the effect of signal-to-noise ratio (SNR) in DL-based communication systems and prove that training at a high SNR could produce a good training performance for autoencoder.

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Authors (3)
  1. Xiao Chen (277 papers)
  2. Liang Wu (138 papers)
  3. Zaichen Zhang (56 papers)

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