English

Kernelization Bounds for Constrained Coloring

Computational Complexity 2026-04-24 v1 Data Structures and Algorithms

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 RR. We establish a conditional lower bound on the kernel size in terms of the largest arity of an OR relation definable from RR. Building on this, we investigate the kernel complexity of uniformly rainbow free coloring problems. In these problems, for fixed positive integers dd, \ell, and qdq \geq d, we are given a graph GG on nn vertices and a collection F\cal F of \ell-tuples of dd-subsets of its vertex set, and the goal is to decide whether there exists a proper coloring of GG with qq colors such that no \ell-tuple in F\cal F is uniformly rainbow, that is, no tuple has all its sets colored with the same dd distinct colors. We determine, for all admissible values of dd, \ell, and qq, the infimum over all values η\eta for which the problem admits a kernel of size O(nη)O(n^\eta), under the assumption NPcoNP/poly\mathsf{NP} \nsubseteq \mathsf{coNP/poly}. 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).

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Cite

@article{arxiv.2604.21531,
  title  = {Kernelization Bounds for Constrained Coloring},
  author = {Ishay Haviv},
  journal= {arXiv preprint arXiv:2604.21531},
  year   = {2026}
}

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32 pages