极性码的神经动态连续对消翻转译码

Nghia Doan, Seyyed Ali Hashemi, Furkan Ercan, Thibaud Tonnellier, W. Gross
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引用次数: 9

摘要

动态连续对消翻转(DSCF)极化码译码是一种功能强大的译码算法,可以实现连续对消列表(SCL)译码的纠错性能,其复杂度接近实际信噪比下的连续对消(SC)译码。然而,DSCF解码需要昂贵的超越计算,这对其实现的复杂性有不利影响。在本文中,我们首先证明了在传统的DSCF解码上直接应用通用近似方案会导致显著的纠错性能损失。然后,我们引入了一个训练参数,并提出了一个近似方案,该方案完全消除了在DSCF解码中执行超越计算的需要,几乎没有纠错性能的下降。
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Neural Dynamic Successive Cancellation Flip Decoding of Polar Codes
Dynamic successive cancellation flip (DSCF) decoding of polar codes is a powerful algorithm that can achieve the error correction performance of successive cancellation list (SCL) decoding, with a complexity that is close to that of successive cancellation (SC) decoding at practical signal-to-noise ratio (SNR) regimes. However, DSCF decoding requires costly transcendental computations which adversely affect its implementation complexity. In this paper, we first show that a direct application of common approximation schemes on the conventional DSCF decoding results in significant error-correction performance loss. We then introduce a training parameter and propose an approximation scheme which completely removes the need to perform transcendental computations in DSCF decoding, with almost no error-correction performance degradation.
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