Tight Approximation Guarantees for Concave Coverage Problems
Siddharth Barman, Omar Fawzi, Paul Ferm\'e

TL;DR
This paper introduces a generalized coverage problem with concave functions, providing an efficient approximation algorithm with guarantees tied to the Poisson concavity ratio, and establishes NP-hardness for sublinear growth functions.
Contribution
It presents a novel approximation algorithm for concave coverage problems with guarantees based on the Poisson concavity ratio, extending prior results and applying to various domains.
Findings
Achieves approximation ratio equal to the Poisson concavity ratio of
Provides matching NP-hardness results for sublinear
Improves and generalizes previous results in multi-coverage and voting applications
Abstract
In the maximum coverage problem, we are given subsets of a universe along with an integer and the objective is to find a subset of size that maximizes . It is a classic result that the greedy algorithm for this problem achieves an optimal approximation ratio of . In this work we consider a generalization of this problem wherein an element can contribute by an amount that depends on the number of times it is covered. Given a concave, nondecreasing function , we define , where . The standard maximum coverage problem corresponds to taking . For any such , we provide an efficient algorithm that achieves an approximation ratio equal to the Poisson…
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