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LATIN
2010
Springer

Kernelization through Tidying

13 years 11 months ago
Kernelization through Tidying
Abstract. We introduce the NP-hard graph-based data clustering problem s-Plex Cluster Vertex Deletion, where the task is to delete at most k vertices from a graph so that the connected components of the resulting graph are s-plexes. In an s-plex, every vertex has an edge to all but at most s − 1 other vertices; cliques are 1-plexes. We propose a new method for kernelizing a large class of vertex deletion problems and illustrate it by developing an O(k2 s3 )-vertex problem kernel for s-Plex Cluster Vertex Deletion that can be computed in O(ksn2 ) time, where n is the number of graph vertices. The corresponding “kernelization through tidying” exploits polynomial-time approximation results.
René van Bevern, Hannes Moser, Rolf Niederm
Added 18 May 2010
Updated 18 May 2010
Type Conference
Year 2010
Where LATIN
Authors René van Bevern, Hannes Moser, Rolf Niedermeier
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