Optimal Padded Decomposition For Bounded Treewidth Graphs

Arnold Filtser, Tobias Friedrich, Davis Issac, Nikhil Kumar, Hung Le, Nadym Mallek, Ziena Zeif
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Abstract

A $(\beta,\delta,\Delta)$-padded decomposition of an edge-weighted graph $G = (V,E,w)$ is a stochastic decomposition into clusters of diameter at most $\Delta$ such that for every vertex $v\in V$, the probability that $\rm{ball}_G(v,\gamma\Delta)$ is entirely contained in the cluster containing $v$ is at least $e^{-\beta\gamma}$ for every $\gamma \in [0,\delta]$. Padded decompositions have been studied for decades and have found numerous applications, including metric embedding, multicommodity flow-cut gap, muticut, and zero extension problems, to name a few. In these applications, parameter $\beta$, called the padding parameter, is the most important parameter since it decides either the distortion or the approximation ratios. For general graphs with $n$ vertices, $\beta = \Theta(\log n)$. Klein, Plotkin, and Rao showed that $K_r$-minor-free graphs have padding parameter $\beta = O(r^3)$, which is a significant improvement over general graphs when $r$ is a constant. A long-standing conjecture is to construct a padded decomposition for $K_r$-minor-free graphs with padding parameter $\beta = O(\log r)$. Despite decades of research, the best-known result is $\beta = O(r)$, even for graphs with treewidth at most $r$. In this work, we make significant progress toward the aforementioned conjecture by showing that graphs with treewidth $\rm{tw}$ admit a padded decomposition with padding parameter $O(\log \rm{tw})$, which is tight. As corollaries, we obtain an exponential improvement in dependency on treewidth in a host of algorithmic applications: $O(\sqrt{ \log n \cdot \log(\rm{tw})})$ flow-cut gap, max flow-min multicut ratio of $O(\log(\rm{tw}))$, an $O(\log(\rm{tw}))$ approximation for the 0-extension problem, an $\ell^{O(\log n)}_\infty$ embedding with distortion $O(\log \rm{tw})$, and an $O(\log \rm{tw})$ bound for integrality gap for the uniform sparsest cut.
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有界树宽图的最优填充分解
边加权图 $G =(V,E,w)$ 的$(\beta,\delta,\Delta)$填充分解是将其随机分解为直径至多为$\Delta$的簇,这样对于 V$ 中的每个顶点$v、对于 [0,\delta]$ 中的每一个 $\gamma ,$rm{ball}_G(v,\gamma\Delta)$ 完全包含在包含 $v$ 的簇中的概率至少为 $e^{-\beta\gamma}$。数十年来,人们一直在研究填充分解,并发现了许多应用,其中包括度量嵌入、多商品流切隙、突变和零扩展问题等等。在这些应用中,参数$\beta$(称为填充参数)是最重要的参数,因为它决定了失真度或近似率。对于具有 $n$ 顶点的一般图形,$\beta = \Theta(\log n)$。Klein、Plotkin 和 Rao 发现,当 $r$ 是常数时,$K_r$-无最小图的填充参数为 $\beta = O(r^3)$,这比一般图有了显著的改进。一直以来的猜想是为$K_r$无主图构建一个填充分解,其填充参数为$\beta = O(\log r)$。经过几十年的研究,最著名的结果是 $\beta = O(r)$,即使对于树宽最多为 $r$ 的图也是如此。在这项工作中,我们证明了树宽为 $\rm{tw}$ 的图可以进行填充分解,填充参数为 $O(\log\rm{tw})$,这是正确的,从而在实现上述猜想方面取得了重大进展。作为推论,我们在大量算法应用中获得了对树宽依赖性的指数级改进:O(\sqrt{\log n \cdot\log(\rm{tw})})$ 流切间隙,最大流-最小多切比率为$O(\log(\rm{tw}))$,0-扩展问题的$O(\log(\rm{tw}))$ 近似值、一个失真度为 $O(\log\rm{tw})$ 的 $ell^{O(\log n)}_\infty$ 嵌入,以及一个统一最难切割的积分差距的 $O(\log\rm{tw})$ 约束。
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