Parameterized Complexity of Dominating Set Variants in Almost Cluster and Split Graphs
May 17, 2024 Β· Declared Dead Β· π Journal of computer and system sciences (Print)
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Authors
Dishant Goyal, Ashwin Jacob, Kaushtubh Kumar, Diptapriyo Majumdar, Venkatesh Raman
arXiv ID
2405.10556
Category
cs.DS: Data Structures & Algorithms
Citations
2
Venue
Journal of computer and system sciences (Print)
Last Checked
4 months ago
Abstract
We consider structural parameterizations of the fundamental Dominating Set problem and its variants in the parameter ecology program. We give improved FPT algorithms and lower bounds under well-known conjectures for dominating set in graphs that are k vertices away from a cluster graph or a split graph. These are graphs in which there is a set of k vertices (called the modulator) whose deletion results in a cluster graph or a split graph. We also call k as the deletion distance (to the appropriate class of graphs). When parameterized by the deletion distance k to cluster graphs - we can find a minimum dominating set (DS) in 3^k n^{O(1)}-time. Within the same time, we can also find a minimum independent dominating set (IDS) or a minimum dominating clique (DC) or a minimum efficient dominating set (EDS) or a minimum total dominating set (TDS). We also show that most of these variants of dominating set do not have polynomial sized kernel. Additionally, we show that when parameterized by the deletion distance k to split graphs - IDS can be solved in 2^k n^{O(1)}-time and EDS can be solved in 3^{k/2}n^{O(1)}.
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