What is known about Vertex Cover Kernelization?
November 23, 2018 Β· Declared Dead Β· π Adventures Between Lower Bounds and Higher Altitudes
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Authors
Michael R. Fellows, Lars Jaffke, Aliz Izabella KirΓ‘ly, Frances A. Rosamond, Mathias Weller
arXiv ID
1811.09429
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.AI
Citations
28
Venue
Adventures Between Lower Bounds and Higher Altitudes
Last Checked
3 months ago
Abstract
We are pleased to dedicate this survey on kernelization of the Vertex Cover problem, to Professor Juraj HromkoviΔ on the occasion of his 60th birthday. The Vertex Cover problem is often referred to as the Drosophila of parameterized complexity. It enjoys a long history. New and worthy perspectives will always be demonstrated first with concrete results here. This survey discusses several research directions in Vertex Cover kernelization. The Barrier Degree of Vertex Cover kernelization is discussed. We have reduction rules that kernelize vertices of small degree, including in this paper new results that reduce graphs almost to minimum degree five. Can this process go on forever? What is the minimum vertex-degree barrier for polynomial-time kernelization? Assuming the Exponential-Time Hypothesis, there is a minimum degree barrier. The idea of automated kernelization is discussed. We here report the first experimental results of an AI-guided branching algorithm for Vertex Cover whose logic seems amenable for application in finding reduction rules to kernelize small-degree vertices. The survey highlights a central open problem in parameterized complexity. Happy Birthday, Juraj!
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