Light Code: Light Analytical and Neural Codes for Channels With Feedback

Sravan Kumar Ankireddy;Krishna R. Narayanan;Hyeji Kim
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Abstract

The design of reliable and efficient codes for channels with feedback remains a longstanding challenge in communication theory. While significant improvements have been achieved by leveraging deep learning techniques, neural codes often suffer from high computational costs, a lack of interpretability, and limited practicality in resource-constrained settings. We focus on designing low-complexity coding schemes that are interpretable and more suitable for communication systems. We advance both analytical and neural codes. First, we demonstrate that Power Blast, an analytical coding scheme inspired by Schalkwijk-Kailath (SK) and Gallager-Nakiboğlu (GN) schemes, achieves notable reliability improvements over both SK and GN schemes, outperforming neural codes in high signal-to-noise ratio (SNR) regions. Next, to enhance reliability in low-SNR regions, we propose Light Code, a lightweight neural code that achieves state-of-the-art reliability while using a fraction of memory and compute compared to existing deep-learning-based codes. Finally, we systematically analyze the learned codes, establishing connections between Light Code and Power Blast, identifying components crucial for performance, and providing interpretation aided by linear regression analysis.
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LIGHTCODE:反馈通道的光分析和神经编码
为具有反馈的信道设计可靠有效的编码是通信理论中一个长期存在的挑战。虽然利用深度学习技术已经取得了重大进步,但神经编码通常存在计算成本高、缺乏可解释性以及在资源受限环境下实用性有限的问题。我们专注于设计低复杂度的编码方案,这些方案是可解释的,更适合于通信系统。我们提出了分析和神经密码。首先,我们证明了Power Blast,一种受Schalkwijk-Kailath (SK)和Gallager-Nakiboğlu (GN)方案启发的分析编码方案,比SK和GN方案实现了显着的可靠性改进,在高信噪比(SNR)区域优于神经编码。接下来,为了提高低信噪比区域的可靠性,我们提出了Light Code,这是一种轻量级的神经代码,与现有的基于深度学习的代码相比,它在使用一小部分内存和计算的同时实现了最先进的可靠性。最后,我们系统地分析了学习到的代码,建立了Light Code和Power Blast之间的联系,确定了对性能至关重要的组件,并通过线性回归分析提供了解释。
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