A Study of Neural Polar Decoders for Communication

Published: 24 Sept 2025, Last Modified: 18 Nov 2025AI4NextG @ NeurIPS 25 PosterEveryoneRevisionsBibTeXCC BY 4.0
Keywords: Decoding, Channels with memory, data-driven, neural polar decoders, polar codes, 5G New Radio
Abstract: In this work, we adapt and analyze Neural Polar Decoders (NPDs) for end-to-end communication systems. While prior work demonstrated the effectiveness of NPDs on synthetic channels, this study extends the NPD to real-world communication systems. First, the NPD is adapted to complete OFDM and single-carrier communication systems. Then, to satisfy practical system requirements, the NPD is extended to support any code length via rate matching, higher-order modulations, and robustness across diverse channel conditions. Since the NPD operates directly on channels with memory, it exploits their structure to achieve higher data rates without requiring pilots and a cyclic prefix. Although the NPD entails higher computational complexity than the standard 5G polar decoder, its neural network architecture enables an efficient representation of channel statistics, resulting in manageable complexity suitable for practical systems. Simulation results over 5G channels demonstrate that the NPD consistently outperforms the 5G polar decoder in terms of BER, BLER, and throughput. These improvements are particularly significant for low-rate and short-block configurations, which are prevalent in 5G control channels. Furthermore, NPDs applied to single-carrier systems offer performance comparable to OFDM with lower PAPR, enabling effective single-carrier transmission over 5G channels. These results position the NPD as a high-performance, pilotless, and robust decoding solution.
Submission Number: 43
Loading