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Improved deep learning aided key recovery framework: applications to large-state block ciphers
Regular Papers | Updated:2025-02-25
    • Improved deep learning aided key recovery framework: applications to large-state block ciphers

      Enhanced Publication
    • 改进的深度学习辅助密钥恢复框架:大状态分组密码的应用
    • Frontiers of Information Technology & Electronic Engineering   Vol. 25, Issue 10, Pages: 1406-1420(2024)
    • DOI:10.1631/FITEE.2300848    

      CLC: TN918; TP18
    • Received:19 December 2023

      Accepted:19 March 2024

      Published:0 October 2024

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  • Xiaowei LI, Jiongjiong REN, Shaozhen CHEN. Improved deep learning aided key recovery framework: applications to large-state block ciphers[J]. Frontiers of Information Technology & Electronic Engineering, 2024, 25(10): 1406-1420. DOI: 10.1631/FITEE.2300848.

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