首页> 外文会议>Foundations of Computer Science, 2004. Proceedings. 45th Annual IEEE Symposium on >Worst-case to average-case reductions based on Gaussian measures
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Worst-case to average-case reductions based on Gaussian measures

机译:基于高斯度量的最坏情况到平均情况的减少

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We show that solving modular linear equation on the average is at least as hard as approximating several lattice problems in the worst case within a factor almost linear in the rank of the lattice. The lattice problems we consider are the shortest vector problem, the shortest independent vectors problem and the covering radius problem. The approximation factor we obtain is O(n) for all three problems. This greatly improves on all previous work on the subject starting from Ajtai's seminal paper (STOC, 1996), up to the strongest previously known results by Micciancio (STOC, 2002). Our results also bring us closer to the limit where the problems are no longer known to be in NP /spl cap/ coNP. Our main tools are Gaussian measures on lattices and the high dimensional Fourier transform. We start by defining a new lattice parameter which determines the amount of Gaussian noise that one has to add to a lattice in order to get close to a uniform distribution, in addition to yielding quantitatively much stronger results, the use of this parameter allows us to simplify many of the complications in previous work. Our technical contributions are two-fold. First, we show tight connections between this new parameter and existing lattice parameters. One such important connection is between this parameter and the length of the shortest set of linearly independent vectors. Second, we prove that the distribution that one obtains after adding Gaussian noise to the lattice has the following interesting property: the distribution of the noise vector when conditioning on the final value behaves in many respects like the original Gaussian noise vector. In particular, its moments remain essentially unchanged.
机译:我们证明,平均而言,求解模块化线性方程至少与在最坏情况下在晶格等级中几乎线性的因子中近似几个晶格问题一样困难。我们考虑的晶格问题是最短的向量问题,最短的独立向量问题和覆盖半径问题。对于所有三个问题,我们获得的近似因子均为O(n)。从Ajtai的开创性论文(STOC,1996)到Micciancio(STOC,2002)以前最有力的结果,这大大改进了以前有关该主题的所有工作。我们的结果也使我们更接近极限,在这个极限下,问题不再存在于NP / spl cap / coNP中。我们的主要工具是对格子的高斯测度和高维傅立叶变换。我们首先定义一个新的晶格参数,该参数确定一个人必须添加到一个晶格中才能获得接近均匀分布的高斯噪声量,除了产生定量更强的结果外,使用此参数还可以使我们简化了先前工作中的许多复杂性。我们的技术贡献是双重的。首先,我们展示了这个新参数与现有晶格参数之间的紧密联系。一个如此重要的联系是在此参数和最短的线性独立向量集的长度之间。其次,我们证明了在将高斯噪声添加到晶格后获得的分布具有以下有趣的特性:当以最终值为条件时,噪声矢量的分布在许多方面都表现得像原始的高斯噪声矢量一样。特别地,其时刻基本上保持不变。

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