Deep reinforcement learning autoencoder with RA-GAN and GAN

Hoang-Sy Nguyen, Cong-Danh Huynh
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引用次数: 0

Abstract

Deep learning utilization to optimize block-structured communication systems has attracted tremendous attention from researchers. Nevertheless, owing to the extensive data transmission between the transmitter and the receiver, communication, in this case, is hard to establish and maintain effectively. As a solution for this, we first investigate typical end-to-end learning for a communication system, Generative Adversarial Network (GAN). Then, two problems associated with GAN-based systems, the gradient vanishing and overfitting, are reviewed. Subsequently, a residual aided GAN (RA-GAN) is proposed as means to overcome these problems. In the proposed learning scheme, the residual learning and the regularization method are used to mitigate the gradient vanishing and over-fitting problems. In the proposed learning scheme, the residual learning and the regularization method are used to mitigate the gradient vanishing and over-fitting problems. Finally, the numerical results performed in MATLAB for simulation and Codelabs for training have proven that the RA-GAN scheme has near-optimal performance and outperforms the conventional GAN scheme. Throughout this case study, readers can understand the issues that would occur when deep learning is applied to a communication system and possible approaches to address them.
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基于RA-GAN和GAN的深度强化学习自编码器
利用深度学习优化块结构通信系统已经引起了研究人员的极大关注。然而,由于发射机和接收机之间的数据传输非常广泛,在这种情况下,通信很难有效地建立和维持。为了解决这个问题,我们首先研究了通信系统的典型端到端学习,生成对抗网络(GAN)。然后,讨论了梯度消失和过拟合这两个与gan系统相关的问题。随后,提出了一种残差辅助GAN (RA-GAN)作为克服这些问题的手段。在该学习方案中,采用残差学习和正则化方法来缓解梯度消失和过拟合问题。在该学习方案中,采用残差学习和正则化方法来缓解梯度消失和过拟合问题。最后,在MATLAB仿真和Codelabs训练中进行的数值结果证明,RA-GAN方案具有接近最优的性能,优于传统的GAN方案。在整个案例研究中,读者可以理解当深度学习应用于通信系统时可能出现的问题以及解决这些问题的可能方法。
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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
CiteScore
3.00
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