Improved Approximations for Min Sum Vertex Cover and Generalized Min Sum Set Cover
Nikhil Bansal, Jatin Batra, Majid Farhadi, Prasad Tetali

TL;DR
This paper introduces improved approximation algorithms for the generalized min sum set cover, min sum vertex cover, and related problems, achieving near-optimal bounds and novel analytical tools.
Contribution
It presents a 4.642-approximation for GMSSC, a 16/9-approximation for MSVC, and analyzes the _p norm of cover-time, advancing the state-of-the-art in approximation algorithms.
Findings
Achieved a 4.642 approximation for GMSSC.
Provided a 16/9 approximation for MSVC.
Established tight bounds for the _p norm of cover-time.
Abstract
We study the generalized min sum set cover (GMSSC) problem, wherein given a collection of hyperedges with arbitrary covering requirements , the goal is to find an ordering of the vertices to minimize the total cover time of the hyperedges; a hyperedge is considered covered by the first time when many of its vertices appear in the ordering. We give a approximation algorithm for GMSSC, coming close to the best possible bound of , already for the classical special case (with all ) of min sum set cover (MSSC) studied by Feige, Lov\'{a}sz and Tetali, and improving upon the previous best known bound of due to Im, Sviridenko and van der Zwaan. Our algorithm is based on transforming the LP solution by a suitable kernel and applying randomized rounding. This also gives an LP-based approximation for MSSC. As part of the analysis of our algorithm, we…
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