Stochastic Minimum Vertex Cover in General Graphs: a $3/2$-Approximation

Autor: Derakhshan, Mahsa, Durvasula, Naveen, Haghtalab, Nika
Rok vydání: 2023
Předmět:
Druh dokumentu: Working Paper
Popis: Our main result is designing an algorithm that returns a vertex cover of $\mathcal{G}^\star$ with size at most $(3/2+\epsilon)$ times the expected size of the minimum vertex cover, using only $O(n/\epsilon p)$ non-adaptive queries. This improves over the best-known 2-approximation algorithm by Behnezhad, Blum, and Derakhshan [SODA'22], who also show that $\Omega(n/p)$ queries are necessary to achieve any constant approximation. Our guarantees also extend to instances where edge realizations are not fully independent. We complement this upper bound with a tight $3/2$-approximation lower bound for stochastic graphs whose edges realizations demonstrate mild correlations.
Databáze: arXiv