Stochastic resonance in iterative decoding: Message passing and gradient descent bit flipping

P. Ivaniš, Srdan Brkic, B. Vasic
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Abstract

This paper contains a survey on iterative decoders of low-density parity-check (LDPC) codes made of unreliable logic gates that are capable to provide lower probability of error, when compared to their perfectly reliable counterparts. We have recently shown that the error-floor performance of message-passing decoders can be improved, if randomness that exists in unreliable logic gates is incorporated into decoding deliberately, without any complexity cost. Furthermore, we have shown that controlling the level of unreliability enable us to exploit the stochastic resonance phenomenon, previously observed in theoretical physics, electronic and magnetic systems. In contrary to common belief, we have shown that for a narrow range of gate failure probability the overall decoding performance is dramatically increased. In this paper, we show that the effect of stochastic resonance is even more noticeable for the case of the gradient descent bit-flipping (GDBF) algorithm. This decoder combines the simplest iterative decoding algorithm with gradient descent optimization, making it an attractive solution for a variety of low complexity storage systems, or code-based cryptosystems. In addition, we show that getting the most of the stochastic resonance is essentially a deep learning problem, since setting the levels of unreliability for individual parts of the decoder by a training process is a step toward incorporating the machine learning techniques into design and analysis of iterative decoders of LDPC codes.
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迭代译码中的随机共振:消息传递和梯度下降位翻转
本文包含对低密度奇偶校验(LDPC)码的迭代解码器的调查,该解码器由不可靠的逻辑门组成,与完全可靠的对口器相比,它能够提供更低的错误概率。我们最近的研究表明,如果在不可靠逻辑门中存在的随机性被有意地纳入解码中,并且没有任何复杂性成本,则可以提高消息传递解码器的错误层性能。此外,我们已经证明,控制不可靠性的水平使我们能够利用随机共振现象,以前在理论物理,电子和磁性系统中观察到。与通常的看法相反,我们已经表明,在一个狭窄的门失效概率范围内,整体解码性能显着提高。在本文中,我们证明了随机共振的影响在梯度下降比特翻转(GDBF)算法的情况下更为明显。该解码器将最简单的迭代解码算法与梯度下降优化相结合,使其成为各种低复杂度存储系统或基于代码的密码系统的有吸引力的解决方案。此外,我们表明,获得大部分随机共振本质上是一个深度学习问题,因为通过训练过程为解码器的各个部分设置不可靠性水平是将机器学习技术纳入LDPC码的迭代解码器设计和分析的一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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