A Local Search-Based Approach for Set Covering
November 08, 2022 Β· Declared Dead Β· π SIAM Symposium on Simplicity in Algorithms
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Authors
Anupam Gupta, Euiwoong Lee, Jason Li
arXiv ID
2211.04444
Category
cs.DS: Data Structures & Algorithms
Citations
10
Venue
SIAM Symposium on Simplicity in Algorithms
Last Checked
4 months ago
Abstract
In the Set Cover problem, we are given a set system with each set having a weight, and we want to find a collection of sets that cover the universe, whilst having low total weight. There are several approaches known (based on greedy approaches, relax-and-round, and dual-fitting) that achieve a $H_k \approx \ln k + O(1)$ approximation for this problem, where the size of each set is bounded by $k$. Moreover, getting a $\ln k - O(\ln \ln k)$ approximation is hard. Where does the truth lie? Can we close the gap between the upper and lower bounds? An improvement would be particularly interesting for small values of $k$, which are often used in reductions between Set Cover and other combinatorial optimization problems. We consider a non-oblivious local-search approach: to the best of our knowledge this gives the first $H_k$-approximation for Set Cover using an approach based on local-search. Our proof fits in one page, and gives a integrality gap result as well. Refining our approach by considering larger moves and an optimized potential function gives an $(H_k - Ξ©(\log^2 k)/k)$-approximation, improving on the previous bound of $(H_k - Ξ©(1/k^8))$ (\emph{R.\ Hassin and A.\ Levin, SICOMP '05}) based on a modified greedy algorithm.
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