A $2^{n/2}$-Time Algorithm for $\sqrt{n}$-SVP and $\sqrt{n}$-Hermite SVP, and an Improved Time-Approximation Tradeoff for (H)SVP
Divesh Aggarwal, Zeyong Li, Noah Stephens-Davidowitz

TL;DR
This paper introduces a $2^{n/2+o(n)}$-time algorithm for finding short lattice vectors close to Minkowski's bound, improving the efficiency of lattice basis reduction with implications for cryptography.
Contribution
It presents a novel $2^{n/2+o(n)}$-time algorithm for near-optimal lattice vector approximation and enhances the time-approximation tradeoff for (H)SVP problems.
Findings
Achieves $2^{n/2+o(n)}$-time complexity for near-optimal lattice vectors.
Provides a modified basis reduction algorithm with improved tradeoffs.
Demonstrates relevance to cryptographic applications.
Abstract
We show a -time algorithm that finds a (non-zero) vector in a lattice with norm at most , where is the length of a shortest non-zero lattice vector and is the lattice determinant. Minkowski showed that and that there exist lattices with , so that our algorithm finds vectors that are as short as possible relative to the determinant (up to a polylogarithmic factor). The main technical contribution behind this result is new analysis of (a simpler variant of) an algorithm from arXiv:1412.7994, which was only previously known to solve less useful problems. To achieve this, we rely…
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