Deep Learning Based Modified Message Passing Algorithm for Sparse Code Multiple Access

Lanping Li, Xiaohu Tang, C. Tellambura
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引用次数: 4

Abstract

Shuffled message passing algorithm (SMPA) is a serial variant of message passing algorithm (MPA) for sparse code multiple access (SCMA) signal detection, which accelerates the convergence rate of MPA. However, SMPA still achieves the near-optimal performance due to the effect of cycles in the factor graph. In the paper, we propose to optimize the weights assigned to the edges of the factor graph by unfolding SMPA as layers of deep neural network (DNN). We consider the weights as network parameters and then train the network offline to obtain weights which can minimize the loss function. With simulations, we show that DNN based SMPA (DNN-SMPA) outperforms SMPA in terms of bit-error-rate (BER) for the same level of computational complexity.
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基于深度学习的改进稀疏码多址消息传递算法
shuffle message passing algorithm (SMPA)是用于稀疏码多址(SCMA)信号检测的消息传递算法(MPA)的串行变体,它加快了MPA的收敛速度。然而,由于因子图中循环的影响,SMPA仍然达到了接近最优的性能。在本文中,我们提出通过将SMPA展开为深度神经网络(DNN)层来优化分配给因子图边缘的权重。我们将权值作为网络参数,然后对网络进行离线训练,以获得使损失函数最小的权值。通过模拟,我们表明基于DNN的SMPA (DNN-SMPA)在相同计算复杂度水平下的误码率(BER)方面优于SMPA。
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