English

Lattice Problems, Gauge Functions and Parameterized Algorithms

Computational Complexity 2008-05-01 v1 Data Structures and Algorithms

Abstract

Given a k-dimensional subspace M\subseteq \R^n and a full rank integer lattice L\subseteq \R^n, the \emph{subspace avoiding problem} SAP is to find a shortest vector in L\setminus M. Treating k as a parameter, we obtain new parameterized approximation and exact algorithms for SAP based on the AKS sieving technique. More precisely, we give a randomized (1+ϵ)(1+\epsilon)-approximation algorithm for parameterized SAP that runs in time 2^{O(n)}.(1/\epsilon)^k, where the parameter k is the dimension of the subspace M. Thus, we obtain a 2^{O(n)} time algorithm for \epsilon=2^{-O(n/k)}. We also give a 2^{O(n+k\log k)} exact algorithm for the parameterized SAP for any \ell_p norm. Several of our algorithms work for all gauge functions as metric with some natural restrictions, in particular for all \ell_p norms. We also prove an \Omega(2^n) lower bound on the query complexity of AKS sieving based exact algorithms for SVP that accesses the gauge function as oracle.

Keywords

Cite

@article{arxiv.0804.4744,
  title  = {Lattice Problems, Gauge Functions and Parameterized Algorithms},
  author = {V. Arvind and Pushkar S. Joglekar},
  journal= {arXiv preprint arXiv:0804.4744},
  year   = {2008}
}
R2 v1 2026-06-21T10:35:56.467Z