On the Design and Performance of Machine Learning Based Error Correcting Decoders

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Abstract

This paper analyzes the design and competitiveness of four neural network (NN) architectures recently proposed as decoders for forward error correction (FEC) codes. We first consider the so-called single-label neural network (SLNN) and the multi-label neural network (MLNN) decoders which have been reported to achieve near maximum likelihood (ML) performance. Here, we show analytically that SLNN and MLNN decoders can always achieve ML performance, regardless of the code dimensions-although at the cost of computational complexityand no training is in fact required. We then turn our attention to two transformer-based decoders: the error correction code transformer (ECCT) and the cross-attention message passing transformer (CrossMPT). We compare their performance against traditional decoders, and show that ordered statistics decoding outperforms these transformer-based decoders. The results in this paper cast serious doubts on the application of NN-based FEC decoders in the short and medium blocklength regime.

Original languageEnglish
Title of host publication2025 14th International ITG Conference on Systems, Communications and Coding, SCC 2025
PublisherInstitute of Electrical and Electronics Engineers
Number of pages6
ISBN (Electronic)979-8-3315-2289-6
DOIs
Publication statusPublished - 11 Apr 2025
Event14th International ITG Conference on Systems, Communications and Coding, SCC 2025 - Karlsruhe, Germany
Duration: 10 Mar 202513 Mar 2025

Conference

Conference14th International ITG Conference on Systems, Communications and Coding, SCC 2025
Country/TerritoryGermany
CityKarlsruhe
Period10/03/2513/03/25

Bibliographical note

Publisher Copyright:
© 2025 IEEE.

Keywords

  • Forward Error Correction
  • Machine Learning
  • Maximum Likelihood
  • Transformers

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