Faster Parameterized Algorithms using Linear Programming
Abstract
We investigate the parameterized complexity of Vertex Cover parameterized by the difference between the size of the optimal solution and the value of the linear programming (LP) relaxation of the problem. By carefully analyzing the change in the LP value in the branching steps, we argue that combining previously known preprocessing rules with the most straightforward branching algorithm yields an algorithm for the problem. Here is the excess of the vertex cover size over the LP optimum, and we write for a time complexity of the form , where grows exponentially with . We proceed to show that a more sophisticated branching algorithm achieves a runtime of . Following this, using known and new reductions, we give algorithms for the parameterized versions of Above Guarantee Vertex Cover, Odd Cycle Transversal, Split Vertex Deletion and Almost 2-SAT, and an algorithm for Ko\"nig Vertex Deletion, Vertex Cover Param by OCT and Vertex Cover Param by KVD. These algorithms significantly improve the best known bounds for these problems. The most notable improvement is the new bound for Odd Cycle Transversal - this is the first algorithm which beats the dependence on of the seminal algorithm of Reed, Smith and Vetta. Finally, using our algorithm, we obtain a kernel for the standard parameterization of Vertex Cover with at most vertices. Our kernel is simpler than previously known kernels achieving the same size bound.
Cite
@article{arxiv.1203.0833,
title = {Faster Parameterized Algorithms using Linear Programming},
author = {Daniel Lokshtanov and N. S. Narayanaswamy and Venkatesh Raman and M. S. Ramanujan and Saket Saurabh},
journal= {arXiv preprint arXiv:1203.0833},
year = {2012}
}
Comments
A preliminary version of this paper appears in the proceedings of STACS 2012