Complexity of linear relaxations in integer programming
Abstract
For a set of integer points in a polyhedron, the smallest number of facets of any polyhedron whose set of integer points coincides with is called the relaxation complexity . This parameter was introduced by Kaibel & Weltge (2015) and captures the complexity of linear descriptions of without using auxiliary variables. Using tools from combinatorics, geometry of numbers, and quantifier elimination, we make progress on several open questions regarding and its variant , restricting the descriptions of to rational polyhedra. As our main results we show that when: (a) is at most four-dimensional, (b) represents every residue class in , (c) the convex hull of contains an interior integer point, or (d) the lattice-width of is above a certain threshold. Additionally, can be algorithmically computed when is at most three-dimensional, or satisfies one of the conditions (b), (c), or (d) above. Moreover, we obtain an improved lower bound on in terms of the dimension of .
Cite
@article{arxiv.2003.07817,
title = {Complexity of linear relaxations in integer programming},
author = {Gennadiy Averkov and Matthias Schymura},
journal= {arXiv preprint arXiv:2003.07817},
year = {2020}
}
Comments
28 pages, 5 figures