Parameterized algorithms for locating-dominating sets
M\'arcia R. Cappelle, Guilherme C. M. Gomes, Vinicius F. dos Santos

TL;DR
This paper investigates the parameterized complexity of the locating-dominating set problem, establishing tight bounds on algorithmic efficiency and kernelization for various structural graph parameters.
Contribution
It provides new complexity bounds, kernelization results, and open problems for the locating-dominating set problem under different graph parameters.
Findings
No subexponential algorithm under ETH for solution size parameterization.
Exponential kernel for distance to cluster parameterization.
Linear kernel for max leaf number parameterization.
Abstract
A locating-dominating set of a graph is a dominating set of where each vertex not in has a unique neighborhood in , and the Locating-Dominating Set problem asks if contains such a dominating set of bounded size. This problem is known to be even on restricted graph classes, such as interval graphs, split graphs, and planar bipartite subcubic graphs. On the other hand, it is known to be solvable in polynomial time for some graph classes, such as trees and, more generally, graphs of bounded cliquewidth. While these results have numerous implications on the parameterized complexity of the problem, little is known in terms of kernelization under structural parameterizations. In this work, we begin filling this gap in the literature. Our first result shows that Locating-Dominating Set, when parameterized by the solution size , admits no $2^{o(d…
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