Distributed Half-Integral Matching and Beyond
March 09, 2023 Β· Declared Dead Β· π Colloquium on Structural Information & Communication Complexity
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Authors
Sameep Dahal, Jukka Suomela
arXiv ID
2303.05250
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.DC
Citations
1
Venue
Colloquium on Structural Information & Communication Complexity
Last Checked
4 months ago
Abstract
By prior work, it is known that any distributed graph algorithm that finds a maximal matching requires $Ξ©(\log^* n)$ communication rounds, while it is possible to find a maximal fractional matching in $O(1)$ rounds in bounded-degree graphs. However, all prior $O(1)$-round algorithms for maximal fractional matching use arbitrarily fine-grained fractional values. In particular, none of them is able to find a half-integral solution, using only values from $\{0, \frac12, 1\}$. We show that the use of fine-grained fractional values is necessary, and moreover we give a complete characterization on exactly how small values are needed: if we consider maximal fractional matching in graphs of maximum degree $Ξ= 2d$, and any distributed graph algorithm with round complexity $T(Ξ)$ that only depends on $Ξ$ and is independent of $n$, we show that the algorithm has to use fractional values with a denominator at least $2^d$. We give a new algorithm that shows that this is also sufficient.
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