$\ell_1$-sparsity Approximation Bounds for Packing Integer Programs
Abstract
We consider approximation algorithms for packing integer programs (PIPs) of the form where , , and are nonnegative. We let denote the width of which is at least . Previous work by Bansal et al. \cite{bansal-sparse} obtained an -approximation ratio where is the maximum number of nonzeroes in any column of (in other words the -column sparsity of ). They raised the question of obtaining approximation ratios based on the -column sparsity of (denoted by ) which can be much smaller than . Motivated by recent work on covering integer programs (CIPs) \cite{cq,chs-16} we show that simple algorithms based on randomized rounding followed by alteration, similar to those of Bansal et al. \cite{bansal-sparse} (but with a twist), yield approximation ratios for PIPs based on . First, following an integrality gap example from \cite{bansal-sparse}, we observe that the case of is as hard as maximum independent set even when . In sharp contrast to this negative result, as soon as width is strictly larger than one, we obtain positive results via the natural LP relaxation. For PIPs with width where , we obtain an -approximation. In the large width regime, when , we obtain an -approximation. We also obtain a -approximation when .
Keywords
Cite
@article{arxiv.1902.08698,
title = {$\ell_1$-sparsity Approximation Bounds for Packing Integer Programs},
author = {Chandra Chekuri and Kent Quanrud and Manuel R. Torres},
journal= {arXiv preprint arXiv:1902.08698},
year = {2019}
}
Comments
To appear in IPCO 2019