Evolutionary Strategies for the Design of Binary Linear Codes

Claude Carlet, Luca Mariot, Luca Manzoni, Stjepan Picek

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Abstract

The design of binary error-correcting codes is a challenging optimization problem with several applications in telecommunications and storage, which has also been addressed with metaheuristic techniques and evolutionary algorithms. Still, all these efforts focused on optimizing the minimum distance of unrestricted binary codes, i.e., with no constraints on their linearity, which is a desirable property for efficient implementations. In this paper, we present an Evolutionary Strategy (ES) algorithm that explores only the subset of linear codes of a fixed length and dimension. To that end, we represent the candidate solutions as binary matrices and devise variation operators that preserve their ranks. Our experiments show that up to length $n=14$, our ES always converges to an optimal solution with a full success rate, and the evolved codes are all inequivalent to the Best-Known Linear Code (BKLC) given by MAGMA. On the other hand, for larger lengths, both the success rate of the ES as well as the diversity of the evolved codes start to drop, with the extreme case of $(16,8,5)$ codes which all turn out to be equivalent to MAGMA's BKLC.
Original languageEnglish
PublisherArXiv.org
Number of pages15
DOIs
Publication statusPublished - 21 Nov 2022

Keywords

  • cs.NE
  • cs.CR
  • cs.DM
  • cs.IT
  • math.CO
  • math.IT

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  • Evolutionary Strategies for the Design of Binary Linear Codes

    Carlet, C., Mariot, L., Manzoni, L. & Picek, S., 31 Mar 2023, Evolutionary Computation in Combinatorial Optimization - 23rd European Conference, EvoCOP 2023, Held as Part of EvoStar 2023, Proceedings. Pérez Cáceres, L. & Stützle, T. (eds.). Springer, p. 114-129 16 p. (Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics); vol. 13987 LNCS).

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