b-Coloring Parameterized by Clique-Width
March 09, 2020 Β· Declared Dead Β· π Theory of Computing Systems
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Authors
Lars Jaffke, Paloma T. Lima, Daniel Lokshtanov
arXiv ID
2003.04254
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.DM
Citations
10
Venue
Theory of Computing Systems
Last Checked
4 months ago
Abstract
We provide a polynomial-time algorithm for b-Coloring on graphs of constant clique-width. This unifies and extends nearly all previously known polynomial time results on graph classes, and answers open questions posed by Campos and Silva [Algorithmica, 2018] and Bonomo et al. [Graphs Combin., 2009]. This constitutes the first result concerning structural parameterizations of this problem. We show that the problem is FPT when parameterized by the vertex cover number on general graphs, and on chordal graphs when parameterized by the number of colors. Additionally, we observe that our algorithm for graphs of bounded clique-width can be adapted to solve the Fall Coloring problem within the same runtime bound. The running times of the clique-width based algorithms for b-Coloring and Fall Coloring are tight under the Exponential Time Hypothesis.
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