English

Fractals for Kernelization Lower Bounds

Computational Complexity 2017-12-27 v3 Discrete Mathematics Data Structures and Algorithms

Abstract

The composition technique is a popular method for excluding polynomial-size problem kernels for NP-hard parameterized problems. We present a new technique exploiting triangle-based fractal structures for extending the range of applicability of compositions. Our technique makes it possible to prove new no-polynomial-kernel results for a number of problems dealing with length-bounded cuts. In particular, answering an open question of Golovach and Thilikos [Discrete Optim. 2011], we show that, unless NP \subseteq coNP / poly, the NP-hard Length-Bounded Edge-Cut (LBEC) problem (delete at most kk edges such that the resulting graph has no ss-tt path of length shorter than \ell) parameterized by the combination of kk and \ell has no polynomial-size problem kernel. Our framework applies to planar as well as directed variants of the basic problems and also applies to both edge and vertex deletion problems. Along the way, we show that LBEC remains NP-hard on planar graphs, a result which we believe is interesting in its own right.

Keywords

Cite

@article{arxiv.1512.00333,
  title  = {Fractals for Kernelization Lower Bounds},
  author = {Till Fluschnik and Danny Hermelin and André Nichterlein and Rolf Niedermeier},
  journal= {arXiv preprint arXiv:1512.00333},
  year   = {2017}
}

Comments

An extended abstract appeared in Proc. of the 43rd International Colloquium on Automata, Languages, and Programming (ICALP 2016). A full version will appear in SIAM Journal on Discrete Mathematics (SIDMA)

R2 v1 2026-06-22T11:58:43.152Z