English

On polynomial kernelization for Stable Cutset

Data Structures and Algorithms 2024-07-03 v1

Abstract

A stable cutset in a graph GG is a set SV(G)S\subseteq V(G) such that vertices of SS are pairwise non-adjacent and such that GSG-S is disconnected, i.e., it is both stable (or independent) set and a cutset (or separator). Unlike general cutsets, it is NPNP-complete to determine whether a given graph GG has any stable cutset. Recently, Rauch et al.\ [FCT 2023] gave a number of fixed-parameter tractable (FPT) algorithms, time f(k)V(G)cf(k)\cdot |V(G)|^c, for Stable Cutset under a variety of parameters kk such as the size of a (given) dominating set, the size of an odd cycle transversal, or the deletion distance to P5P_5-free graphs. Earlier works imply FPT algorithms relative to clique-width and relative to solution size. We complement these findings by giving the first results on the existence of polynomial kernelizations for \stablecutset, i.e., efficient preprocessing algorithms that return an equivalent instance of size polynomial in the parameter value. Under the standard assumption that NPcoNP/polyNP\nsubseteq coNP/poly, we show that no polynomial kernelization is possible relative to the deletion distance to a single path, generalizing deletion distance to various graph classes, nor by the size of a (given) dominating set. We also show that under the same assumption no polynomial kernelization is possible relative to solution size, i.e., given (G,k)(G,k) answering whether there is a stable cutset of size at most kk. On the positive side, we show polynomial kernelizations for parameterization by modulators to a single clique, to a cluster or a co-cluster graph, and by twin cover.

Keywords

Cite

@article{arxiv.2407.02086,
  title  = {On polynomial kernelization for Stable Cutset},
  author = {Stefan Kratsch and Van Bang Le},
  journal= {arXiv preprint arXiv:2407.02086},
  year   = {2024}
}

Comments

For Dieter Kratsch on his 65th birthday