Randomized contractions meet lean decompositions
October 16, 2018 Β· Declared Dead Β· π ACM Trans. Algorithms
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Authors
Marek Cygan, PaweΕ Komosa, Daniel Lokshtanov, MichaΕ Pilipczuk, Marcin Pilipczuk, Saket Saurabh, Magnus WahlstrΓΆm
arXiv ID
1810.06864
Category
cs.DS: Data Structures & Algorithms
Citations
42
Venue
ACM Trans. Algorithms
Last Checked
3 months ago
Abstract
We show an algorithm that, given an $n$-vertex graph $G$ and a parameter $k$, in time $2^{O(k \log k)} n^{O(1)}$ finds a tree decomposition of $G$ with the following properties: * every adhesion of the tree decomposition is of size at most $k$, and * every bag of the tree decomposition is $(i,i)$-unbreakable in $G$ for every $1 \leq i \leq k$. Here, a set $X \subseteq V(G)$ is $(a,b)$-unbreakable in $G$ if for every separation $(A,B)$ of order at most $b$ in $G$, we have $|A \cap X| \leq a$ or $|B \cap X| \leq a$. The resulting tree decomposition has arguably best possible adhesion size boundsand unbreakability guarantees. Furthermore, the parametric factor in the running time bound is significantly smaller than in previous similar constructions. These improvements allow us to present parameterized algorithms for Minimum Bisection, Steiner Cut, and Steiner Multicut with improved parameteric factor in the running time bound. The main technical insight is to adapt the notion of lean decompositions of Thomas and the subsequent construction algorithm of Bellenbaum and Diestel to the parameterized setting.
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