首页> 外文会议>IEEE Annual Symposium on Foundations of Computer Science >Solving the Closest Vector Problem in 2^n Time -- The Discrete Gaussian Strikes Again!
【24h】

Solving the Closest Vector Problem in 2^n Time -- The Discrete Gaussian Strikes Again!

机译:解决最接近的矢量问题2 ^ n时间 - 再次离散高斯罢工!

获取原文

摘要

We give a 2{n+o(n)}-time and space randomized algorithm for solving the exact Closest Vector Problem (CVP) on n-dimensional Euclidean lattices. This improves on the previous fastest algorithm, the deterministic ~{O}(4n)-time and ~{O}(2n)-space algorithm of Micciancio and Voulgaris. We achieve our main result in three steps. First, we show how to modify the sampling algorithm due to Aggarwal, Dadush, Regev, and Stephens-Davidowitz (ADRS) to solve the problem of discrete Gaussian sampling over lattice shifts, L-t, with very low parameters. While the actual algorithm is a natural generalization of ADRS, the analysis uses substantial new ideas. This yields a 2n+o(n)-time algorithm for approximate CVP with the very good approximation factor γ = 1+2-o(n/log n). Second, we show that the approximate closest vectors to a target vector can be grouped into "lower-dimensional clusters," and we use this to obtain a recursive reduction from exact CVP to a variant of approximate CVP that "behaves well with these clusters." Third, we show that our discrete Gaussian sampling algorithm can be used to solve this variant of approximate CVP. The analysis depends crucially on some new properties of the discrete Gaussian distribution and approximate closest vectors, which might be of independent interest.
机译:我们给出了一个2 {n + O(n)} - 时间和空间随机化算法,用于解决N维欧几里德格子上的确切最接近的矢量问题(CVP)。这改善了前一个最快的算法,Micciancio和Voulgaris的确定性〜{○(4n)-time和〜o}(2n) - 空间算法。我们达到了三个步骤的主要结果。首先,我们展示了如何通过Aggarwal,Dadhush,Regev和Stephens-Davidowitz(ADR)来修改采样算法,以解决晶格变化,L-T的离散高斯采样问题,具有非常低的参数。虽然实际算法是ADR的自然概括,但分析使用了大量的新想法。这产生了具有非常好的近似因子γ= 1 + 2-O(n / log n)的近似CVP的2n + O(n)-time算法。其次,我们示出了对目标向量的近似矢量可以被分组为“低维集群”,并且我们使用它来获得从精确的CVP到近似CVP的变型的递归降低,该变体“对这些集群表现良好。 “第三,我们表明我们的离散高斯采样算法可用于解决近似CVP的这种变体。分析依赖于离散高斯分布的一些新属性和近似最接近的矢量,这可能是独立的兴趣。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号