Lossy Kernels for Connected Dominating Set on Sparse Graphs
Abstract
For α > 1, an α-approximate (bi-)kernel is a polynomial-time algorithm that takes as input an instance (I, k) of a problem Q and outputs an instance (I',k') (of a problem Q') of size bounded by a function of k such that, for every c≥ 1, a c-approximate solution for the new instance can be turned into a (c·α)-approximate solution of the original instance in polynomial time. This framework of lossy kernelization was recently introduced by Lokshtanov et al. We study Connected Dominating Set (and its distance-r variant) parameterized by solution size on sparse graph classes like biclique-free graphs, classes of bounded expansion, and nowhere dense classes. We prove that for every α>1, Connected Dominating Set admits a polynomial-size α-approximate (bi-)kernel on all the aforementioned classes. Our results are in sharp contrast to the kernelization complexity of Connected Dominating Set, which is known to not admit a polynomial kernel even on 2-degenerate graphs and graphs of bounded expansion, unless NP ⊂eq coNP/poly. We complement our results by the following conditional lower bound. We show that if a class C is somewhere dense and closed under taking subgraphs, then for some value of r∈N there cannot exist an α-approximate bi-kernel for the (Connected) Distance-r Dominating Set problem on C for any α>1 (assuming the Gap Exponential Time Hypothesis).
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