Linear-Time Algorithms for k-Edge-Connected Components, k-Lean Tree Decompositions, and More
November 04, 2024 Β· Declared Dead Β· π Symposium on the Theory of Computing
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Authors
Tuukka Korhonen
arXiv ID
2411.02658
Category
cs.DS: Data Structures & Algorithms
Cross-listed
math.CO
Citations
7
Venue
Symposium on the Theory of Computing
Last Checked
4 months ago
Abstract
We present $k^{O(k^2)} m$ time algorithms for various problems about decomposing a given undirected graph by edge cuts or vertex separators of size $<k$ into parts that are ``well-connected'' with respect to cuts or separators of size $<k$; here, $m$ is the total number of vertices and edges of the graph. As an application of our results, we obtain for every fixed $k$ a linear-time algorithm for computing the $k$-edge-connected components of a given graph, solving a long-standing open problem. More generally, we obtain a $k^{O(k^2)} m$ time algorithm for computing a $k$-Gomory-Hu tree of a given graph, which is a structure representing pairwise minimum cuts of size $<k$. Our main technical result, from which the other results follow, is a $k^{O(k^2)} m$ time algorithm for computing a $k$-lean tree decomposition of a given graph. This is a tree decomposition with adhesion size $<k$ that captures the existence of separators of size $<k$ between subsets of its bags. A $k$-lean tree decomposition is also an unbreakable tree decomposition with optimal unbreakability parameters for the adhesion size bound $k$. As further applications, we obtain $k^{O(k^2)} m$ time algorithms for $k$-vertex connectivity and for element connectivity $k$-Gomory-Hu tree. All of our algorithms are deterministic. Our techniques are inspired by the tenth paper of the Graph Minors series of Robertson and Seymour and by Bodlaender's parameterized linear-time algorithm for treewidth.
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