Approximation and parameterized algorithms for geometric independent set with shrinking
November 20, 2016 Β· Declared Dead Β· π International Symposium on Mathematical Foundations of Computer Science
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Authors
MichaΕ Pilipczuk, Erik Jan van Leeuwen, Andreas Wiese
arXiv ID
1611.06501
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.CG
Citations
4
Venue
International Symposium on Mathematical Foundations of Computer Science
Last Checked
4 months ago
Abstract
Consider the Maximum Weight Independent Set problem for rectangles: given a family of weighted axis-parallel rectangles in the plane, find a maximum-weight subset of non-overlapping rectangles. The problem is notoriously hard both in the approximation and in the parameterized setting. The best known polynomial-time approximation algorithms achieve super-constant approximation ratios [Chalermsook and Chuzhoy, SODA 2009; Chan and Har-Peled, Discrete & Comp. Geometry 2012], even though there is a $(1+Ξ΅)$-approximation running in quasi-polynomial time [Adamaszek and Wiese, FOCS 2013; Chuzhoy and Ene, FOCS 2016]. When parameterized by the target size of the solution, the problem is $\mathsf{W}[1]$-hard even in the unweighted setting [Marx, FOCS 2007]. To achieve tractability, we study the following shrinking model: one is allowed to shrink each input rectangle by a multiplicative factor $1-Ξ΄$ for some fixed $Ξ΄>0$, but the performance is still compared against the optimal solution for the original, non-shrunk instance. We prove that in this regime, the problem admits an EPTAS with running time $f(Ξ΅,Ξ΄)\cdot n^{\mathcal{O}(1)}$, and an FPT algorithm with running time $f(k,Ξ΄)\cdot n^{\mathcal{O}(1)}$, in the setting where a maximum-weight solution of size at most $k$ is to be computed. This improves and significantly simplifies a PTAS given earlier for this problem [Adamaszek et al., APPROX 2015], and provides the first parameterized results for the shrinking model. Furthermore, we explore kernelization in the shrinking model, by giving efficient kernelization procedures for several variants of the problem when the input rectangles are squares.
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