Stochastic Weighted Matching: $(1-Ξ΅)$ Approximation
April 18, 2020 Β· Declared Dead Β· π arXiv.org
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Authors
Soheil Behnezhad, Mahsa Derakhshan
arXiv ID
2004.08703
Category
cs.DS: Data Structures & Algorithms
Citations
13
Venue
arXiv.org
Last Checked
3 months ago
Abstract
Let $G=(V, E)$ be a given edge-weighted graph and let its {\em realization} $\mathcal{G}$ be a random subgraph of $G$ that includes each edge $e \in E$ independently with probability $p$. In the {\em stochastic matching} problem, the goal is to pick a sparse subgraph $Q$ of $G$ without knowing the realization $\mathcal{G}$, such that the maximum weight matching among the realized edges of $Q$ (i.e. graph $Q \cap \mathcal{G}$) in expectation approximates the maximum weight matching of the whole realization $\mathcal{G}$. In this paper, we prove that for any desirably small $Ξ΅\in (0, 1)$, every graph $G$ has a subgraph $Q$ that guarantees a $(1-Ξ΅)$-approximation and has maximum degree only $O_{Ξ΅, p}(1)$. That is, the maximum degree of $Q$ depends only on $Ξ΅$ and $p$ (both of which are known to be necessary) and not for example on the number of nodes in $G$, the edge-weights, etc. The stochastic matching problem has been studied extensively on both weighted and unweighted graphs. Previously, only existence of (close to) half-approximate subgraphs was known for weighted graphs [Yamaguchi and Maehara, SODA'18; Behnezhad et al., SODA'19]. Our result substantially improves over these works, matches the state-of-the-art for unweighted graphs [Behnezhad et al., STOC'20], and essentially settles the approximation factor.
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