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Published in: Journal of Combinatorial Optimization 1/2017

19-07-2016

Parameterized algorithms for min–max 2-cluster editing

Authors: Li-Hsuan Chen, Bang Ye Wu

Published in: Journal of Combinatorial Optimization | Issue 1/2017

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Abstract

For a given graph and an integer t, the MinMax 2-Clustering problem asks if there exists a modification of a given graph into two maximal disjoint cliques by inserting or deleting edges such that the number of the editing edges incident to each vertex is at most t. It has been shown that the problem can be solved in polynomial time for \(t<n/4\), where n is the number of vertices. In this paper, we design parameterized algorithms for different ranges of t. Let \(k=t-n/4\). We show that the problem is polynomial-time solvable when roughly \(k<\sqrt{n/32}\). When \(k\in o(n)\), we design a randomized and a deterministic algorithm with sub-exponential time parameterized complexity, i.e., the problem is in SUBEPT. We also show that the problem can be solved in \(O({2}^{n/r}\cdot n^2)\) time for \(k<n/12\) and in \(O(n^2\cdot 2^{3n/4+k})\) time for \(n/12\le k< n/4\), where \(r=2+\lfloor (n/4-3k-2)/(2k+1) \rfloor \ge 2\).

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Appendix
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Metadata
Title
Parameterized algorithms for min–max 2-cluster editing
Authors
Li-Hsuan Chen
Bang Ye Wu
Publication date
19-07-2016
Publisher
Springer US
Published in
Journal of Combinatorial Optimization / Issue 1/2017
Print ISSN: 1382-6905
Electronic ISSN: 1573-2886
DOI
https://doi.org/10.1007/s10878-016-0059-z

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