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Exploring Trade-offs in Batch Bounded Distance Decoding

机译:探索批量界距离解码中的权衡

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Algorithms for solving the Bounded Distance Decoding problem (BDD) are used for estimating the security of lattice-based cryptographic primitives, since these algorithms can be employed to solve variants of the Learning with Errors problem (LWE). In certain parameter regimes where the target vector is small and/or sparse, batches of BDD instances emerge from a combinatorial approach where several components of the target vector are guessed before decoding. In this work we explore trade-offs in solving "Batch-BDD", and apply our techniques to the small-secret Learning with Errors problem. We compare our techniques to previous works which solve batches of BDD instances, such as the hybrid lattice-reduction and meet-in-the-middle attack. Our results are a mixed bag. We show that, in the "enumeration setting" and with BKZ reduction, our techniques outperform a variant of the hybrid attack which does not consider time-memory trade-offs in the guessing phase for certain Round5 (17-bits out of 466), Round5-IoT (19-bits out of 240), and NTRU LPrime (23-bits out of 385) parameter sets. On the other hand, our techniques do not outperform the Hybrid Attack under standard, albeit unrealistic, assumptions. Finally, as expected, our techniques do not improve on previous works in the "sieving setting" (under standard assumptions) where combinatorial attacks in general do not perform well.
机译:用于解决有界距离解码问题(BDD)的算法用于估计基于格子的加密基元的安全性,因为可以采用这些算法来解决具有错误问题(LWE)的学习的变体。在目标向量小和/或稀疏的某些参数规范中,从组合方法中批量出现了批次的BDD实例,其中在解码之前猜测了目标矢量的若干组件。在这项工作中,我们探讨了解决“Batch-BDD”的权衡,并将技术应用于与错误问题的小秘密学习。我们将我们的技术与先前的作品进行比较,解决了批次的BDD实例,例如混合晶格减少和中间攻击。我们的结果是混合袋。我们表明,在“枚举设置”和BKZ减少中,我们的技术优于混合攻击的变体,这在某些往返中的猜测阶段不考虑时间内存权衡(17比特), Round5-IOT(240分的19位),NTRU Lprime(385个中的23位)参数集。另一方面,我们的技术不会在标准下表达混合动力攻击,尽管不切实际的假设。最后,正如预期的那样,我们的技术在“筛分环境”(在标准假设下)并未改进以前的作品,其中组合攻击一般不会表现良好。

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