Recovering S-Box Design Structures and Quantifying Distances Between S-Boxes Using Deep Learning

  • Donggeun Kwon
  • , Deukjo Hong
  • , Jaechul Sung
  • , Seokhie Hong*
  • *Corresponding author for this work

    Research output: Contribution to conferenceConference paperpeer-review

    Abstract

    At ASIACRYPT’19, Bonnetain et al. demonstrated that an S-box can be distinguished from a permutation chosen uniformly at random by quantifying the distances between their behaviors. In this study, we extend this approach by proposing a deep learning-based method to quantify distances between two different S-boxes and evaluate similarities in their design structures. First, we introduce a deep learning-based framework that trains a neural network model to recover the design structure of a given S-box based on its cryptographic table. We then interpret the decision-making process of our trained model to analyze which coefficients in the table play significant roles in identifying S-box structures. Additionally, we investigate the inference results of our model across various scenarios to evaluate its generalization capabilities. Building upon these insights, we propose a novel approach to quantify distances between structurally different S-boxes. Our method effectively assesses structural similarities by embedding S-boxes using the deep learning model and measuring the distances between their embedding vectors. Furthermore, experimental results confirm that this approach is also applicable to structures that the model has never seen during training. Our findings demonstrate that deep learning can reveal the underlying structural similarities between S-boxes, highlighting its potential as a powerful tool for S-box reverse-engineering.

    Original languageEnglish
    Title of host publicationApplied Cryptography and Network Security - 23rd International Conference, ACNS 2025, Proceedings
    EditorsMarc Fischlin, Veelasha Moonsamy
    PublisherSpringer Science and Business Media Deutschland GmbH
    Pages367-390
    Number of pages24
    ISBN (Print)9783031957666
    DOIs
    StatePublished - 2025
    Event23rd International Conference on Applied Cryptography and Network Security, ACNS 2025 - Munich, Germany
    Duration: 2025.06.232025.06.26

    Publication series

    NameLecture Notes in Computer Science
    Volume15827 LNCS
    ISSN (Print)0302-9743
    ISSN (Electronic)1611-3349

    Conference

    Conference23rd International Conference on Applied Cryptography and Network Security, ACNS 2025
    Country/TerritoryGermany
    CityMunich
    Period25.06.2325.06.26

    Keywords

    • Cryptographic tables
    • Deep learning
    • Design structure
    • Quantifying distances
    • S-box reverse-engineering

    Quacquarelli Symonds(QS) Subject Topics

    • Computer Science & Information Systems

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