English

Proximity and flatness bounds for linear integer optimization

Optimization and Control 2022-11-29 v1

Abstract

We develop a technique that can be applied to provide improved upper bounds for two important questions in linear integer optimization. - Proximity bounds: Given an optimal vertex solution for the linear relaxation, how far away is the nearest optimal integer solution (if one exists)? - Flatness bounds: If a polyhedron contains no integer point, what is the smallest number of integer parallel hyperplanes defined by an integral, non-zero, normal vector that intersect the polyhedron? This paper presents a link between these two questions by refining a proof technique that has been recently introduced by the authors. A key technical lemma underlying our technique concerns the areas of certain convex polygons in the plane: if a polygon KR2K\subseteq\mathbb{R}^2 satisfies τKK\tau K \subseteq K^{\circ}, where τ\tau denotes 9090^{\circ} counterclockwise rotation and KK^{\circ} denotes the polar of KK, then the area of KK^{\circ} is at least 3.

Keywords

Cite

@article{arxiv.2211.14941,
  title  = {Proximity and flatness bounds for linear integer optimization},
  author = {Marcel Celaya and Stefan Kuhlmann and Joseph Paat and Robert Weismantel},
  journal= {arXiv preprint arXiv:2211.14941},
  year   = {2022}
}

Comments

This manuscripts greatly builds upon a related IPCO2022 paper. For all of the overlapping material, the current manuscript provides improved results. Additionally, the current manuscript derives new connections to flatness and generalizations to {0,k,2k} modular problems