Kernelization Bounds for Constrained Coloring
Abstract
We study the kernel complexity of constraint satisfaction problems over a finite domain, parameterized by the number of variables, whose constraint language consists of two relations: the non-equality relation and an additional permutation-invariant relation . We establish a conditional lower bound on the kernel size in terms of the largest arity of an OR relation definable from . Building on this, we investigate the kernel complexity of uniformly rainbow free coloring problems. In these problems, for fixed positive integers , , and , we are given a graph on vertices and a collection of -tuples of -subsets of its vertex set, and the goal is to decide whether there exists a proper coloring of with colors such that no -tuple in is uniformly rainbow, that is, no tuple has all its sets colored with the same distinct colors. We determine, for all admissible values of , , and , the infimum over all values for which the problem admits a kernel of size , under the assumption . As applications, we obtain nearly tight bounds on the kernel complexity of various coloring problems under diverse settings and parameterizations. This includes graph coloring problems parameterized by the vertex-deletion distance to a disjoint union of cliques, resolving a question of Schalken (2020), as well as uniform hypergraph coloring problems parameterized by the number of vertices, extending results of Jansen and Pieterse (2019) and Beukers (2021).
Cite
@article{arxiv.2604.21531,
title = {Kernelization Bounds for Constrained Coloring},
author = {Ishay Haviv},
journal= {arXiv preprint arXiv:2604.21531},
year = {2026}
}
Comments
32 pages