Polylogarithmic Approximation for Minimum Planarization (Almost)

K. Kawarabayashi, Anastasios Sidiropoulos
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引用次数: 15

Abstract

In the minimum planarization} problem, given some n-vertex graph, the goal is to find a set of vertices of minimum cardinality whose removal leaves a planar graph. This is a fundamental problem in topological graph theory. We present a \log^{O(1)} n-approximation algorithm for this problem on general graphs with running time n^{O(\log n/\log\log n)}. We also obtain a O(n^≥)-approximation with running time n^{O(1/≥)} for any arbitrarily small constant ≥ 0. Prior to our work, no non-trivial algorithm was known for this problem on general graphs, and the best known result even on graphs of bounded degree was a n^{Ω(1)}-approximation \cite{chekuri2013approximation}.As an immediate corollary, we also obtain improved approximation algorithms for the crossing number problem on graphs of bounded degree. Specifically, we obtain O(n^{1/2+≥})-approximation and n^{1/2} \log^{O(1)} n-approximation algorithms in time n^{O(1/≥)} and n^{O(\log n/\log\log n)} respectively. The previously best-known result was a polynomial-time n^{9/10}\log^{O(1)} n-approximation algorithm \cite{DBLP:conf/stoc/Chuzhoy11}.Our algorithm introduces several new tools including an efficient grid-minor construction for apex graphs, and a new method for computing irrelevant vertices. Analogues of these tools were previously available only for exact algorithms. Our work gives efficient implementations of these ideas in the setting of approximation algorithms, which could be of independent interest.
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最小平面化(几乎)的多对数逼近
在最小平面化问题中,给定一个n顶点图,目标是找到一组最小基数的顶点,这些顶点的移除会留下一个平面图。这是拓扑图理论中的一个基本问题。对于运行时间为n^O({\log} n/ {}{}{\log}{}{\log}{ n)的一般图,我们给出了一个}\log{ ^O(1) n-近似算法。}对于任意小常数≥我们也得到了运行时间为{n^}O(1/≥)的O(n^≥)近似。0. 在我们的工作之前,对于一般图上的这个问题,没有已知的非平凡算法,即使在有界度图上,最著名的结果是n^Ω(1){-近似}\cite{chekuri2013approximation} .作为一个直接的推论,我们也得到了有界度图上交叉数问题的改进近似算法。具体来说,我们{分别}在n^O{(1/≥)}和n^O({\log} n/ {}{}{}{\log}{}{\log}{-近似和n^1/2 }\log{ ^}O({1) n-近似算法。以前最著名的结果是一个多项式时间n^9/10 }\log ^{O(1)} n近似算法\cite{DBLP:conf/stoc/Chuzhoy11} .我们的算法引入了几个新的工具,包括一个有效的顶点图的网格小构造,以及一个计算无关顶点的新方法。这些工具的类似物以前只能用于精确的算法。我们的工作在近似算法的设置中提供了这些思想的有效实现,这可能是独立的兴趣。
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