Propagation via Kernelization: The Vertex Cover Constraint

02/07/2017
by   Clement Carbonnel, et al.
0

The technique of kernelization consists in extracting, from an instance of a problem, an essentially equivalent instance whose size is bounded in a parameter k. Besides being the basis for efficient param-eterized algorithms, this method also provides a wealth of information to reason about in the context of constraint programming. We study the use of kernelization for designing propagators through the example of the Vertex Cover constraint. Since the classic kernelization rules often correspond to dominance rather than consistency, we introduce the notion of "loss-less" kernel. While our preliminary experimental results show the potential of the approach, they also show some of its limits. In particular, this method is more effective for vertex covers of large and sparse graphs, as they tend to have, relatively, smaller kernels.

READ FULL TEXT
research
02/04/2021

Kernelization of Maximum Minimal Vertex Cover

In the Maximum Minimal Vertex Cover (MMVC) problem, we are given a graph...
research
11/08/2019

Reconfiguring k-path vertex covers

A vertex subset I of a graph G is called a k-path vertex cover if every ...
research
04/18/2020

Mapping Matchings to Minimum Vertex Covers: Kőnig's Theorem Revisited

It is a celebrated result in early combinatorics that, in bipartite grap...
research
04/27/2020

Bridge-Depth Characterizes which Structural Parameterizations of Vertex Cover Admit a Polynomial Kernel

We study the kernelization complexity of structural parameterizations of...
research
07/30/2018

Vertex Covers Revisited: Indirect Certificates and FPT Algorithms

The classical NP-complete problem Vertex Cover requires us to determine ...
research
01/23/2021

Exploring the Gap Between Treedepth and Vertex Cover Through Vertex Integrity

For intractable problems on graphs of bounded treewidth, two graph param...
research
09/14/2021

Distributed Vertex Cover Reconfiguration

Reconfiguration schedules, i.e., sequences that gradually transform one ...

Please sign up or login with your details

Forgot password? Click here to reset