Covering a Few Submodular Constraints and Applications
Tanvi Bajpai, Chandra Chekuri, Pooja Kulkarni

TL;DR
This paper develops approximation algorithms for covering multiple submodular constraints with fixed number of functions, achieving near-optimal solutions and extending applicability to various problems.
Contribution
It introduces new approximation algorithms for fixed r submodular covering problems, improving over previous bounds and handling weighted coverage functions.
Findings
Achieves a randomized bi-criteria approximation with ratio depending on α and ε.
Provides a near-optimal approximation for weighted coverage functions in deletion-closed set systems.
Shows that approximation ratios for fixed r are comparable to the r=1 case.
Abstract
We consider the problem of covering multiple submodular constraints. Given a finite ground set , a cost function , monotone submodular functions over and requirements the goal is to find a minimum cost subset such that for . When this is the well-known Submodular Set Cover problem. Previous work \cite{chekuri2022covering} considered the setting when is large and developed bi-criteria approximation algorithms, and approximation algorithms for the important special case when each is a weighted coverage function. These are fairly general models and capture several concrete and interesting problems as special cases. The approximation ratios for these problem are at least which is unavoidable when is part of the input. In…
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