Pattern-Sparse Tree Decompositions in $H$-Minor-Free Graphs
D\'aniel Marx, Marcin Pilipczuk, Micha{\l} Pilipczuk

TL;DR
This paper introduces a randomized method to find tree decompositions in $H$-minor-free graphs that facilitate efficient algorithms for pattern detection problems, extending previous results to broader graph classes and neighborhood constraints.
Contribution
It provides a novel sampling technique for tree decompositions with pattern-sparsity properties, enabling faster algorithms for various pattern problems in complex graph classes.
Findings
Efficient randomized sampling of pattern-sparse tree decompositions in $H$-minor-free graphs.
Achieved algorithms with running time $2^{ ilde{O}(\sqrt{k})}n^{O(1)}$ for pattern problems.
Extended results to include neighborhoods in $K_{h,3}$-free graphs, such as bounded-genus graphs.
Abstract
Given an -minor-free graph and an integer , our main technical contribution is sampling in randomized polynomial time an induced subgraph of and a tree decomposition of of width such that for every of size , with probability at least , we have and every bag of the tree decomposition contains at most vertices of . Having such a tree decomposition allows us to solve a wide range of problems in (randomized) time where the solution is a pattern of size , e.g., Directed -Path, -Packing, etc. In particular, our result recovers all the algorithmic applications of the pattern-covering result of Fomin et al. [SIAM J. Computing 2022] (which requires the pattern to be…
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