Parameterized Matroid-Constrained Maximum Coverage
Fran\c{c}ois Sellier

TL;DR
This paper introduces Density-Balanced Subsets in matroids and applies them to develop a fixed-parameter tractable approximation scheme for the maximum coverage problem under matroid constraints, improving previous results.
Contribution
It presents the concept of Density-Balanced Subsets and uses it to create an FPT approximation scheme for matroid-constrained maximum coverage, extending prior work.
Findings
Provides a polynomial-time procedure for approximate kernel extraction.
Achieves a $(1 - rac{ ext{(mu-1)}}{ ho})$ approximation ratio.
First FPT-AS for maximum coverage on arbitrary matroids.
Abstract
In this paper, we introduce the concept of Density-Balanced Subset in a matroid, in which independent sets can be sampled so as to guarantee that (i) each element has the same probability to be sampled, and (ii) those events are negatively correlated. These Density-Balanced Subsets are subsets in the ground set of a matroid in which the traditional notion of uniform random sampling can be extended. We then provide an application of this concept to the Matroid-Constrained Maximum Coverage problem. In this problem, given a matroid of rank on a ground set and a coverage function on , the goal is to find an independent set maximizing . This problem is an important special case of the much-studied submodular function maximization problem subject to a matroid constraint; this is also a generalization of the maximum…
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