Arnold Filtser, Tobias Friedrich, Davis Issac, Nikhil Kumar, Hung Le, Nadym Mallek, Ziena Zeif
{"title":"Optimal Padded Decomposition For Bounded Treewidth Graphs","authors":"Arnold Filtser, Tobias Friedrich, Davis Issac, Nikhil Kumar, Hung Le, Nadym Mallek, Ziena Zeif","doi":"arxiv-2407.12230","DOIUrl":null,"url":null,"abstract":"A $(\\beta,\\delta,\\Delta)$-padded decomposition of an edge-weighted graph $G =\n(V,E,w)$ is a stochastic decomposition into clusters of diameter at most\n$\\Delta$ such that for every vertex $v\\in V$, the probability that\n$\\rm{ball}_G(v,\\gamma\\Delta)$ is entirely contained in the cluster containing\n$v$ is at least $e^{-\\beta\\gamma}$ for every $\\gamma \\in [0,\\delta]$. Padded\ndecompositions have been studied for decades and have found numerous\napplications, including metric embedding, multicommodity flow-cut gap, muticut,\nand zero extension problems, to name a few. In these applications, parameter\n$\\beta$, called the padding parameter, is the most important parameter since it\ndecides either the distortion or the approximation ratios. For general graphs\nwith $n$ vertices, $\\beta = \\Theta(\\log n)$. Klein, Plotkin, and Rao showed\nthat $K_r$-minor-free graphs have padding parameter $\\beta = O(r^3)$, which is\na significant improvement over general graphs when $r$ is a constant. A\nlong-standing conjecture is to construct a padded decomposition for\n$K_r$-minor-free graphs with padding parameter $\\beta = O(\\log r)$. Despite\ndecades of research, the best-known result is $\\beta = O(r)$, even for graphs\nwith treewidth at most $r$. In this work, we make significant progress toward\nthe aforementioned conjecture by showing that graphs with treewidth $\\rm{tw}$\nadmit a padded decomposition with padding parameter $O(\\log \\rm{tw})$, which is\ntight. As corollaries, we obtain an exponential improvement in dependency on\ntreewidth in a host of algorithmic applications: $O(\\sqrt{ \\log n \\cdot\n\\log(\\rm{tw})})$ flow-cut gap, max flow-min multicut ratio of\n$O(\\log(\\rm{tw}))$, an $O(\\log(\\rm{tw}))$ approximation for the 0-extension\nproblem, an $\\ell^{O(\\log n)}_\\infty$ embedding with distortion $O(\\log\n\\rm{tw})$, and an $O(\\log \\rm{tw})$ bound for integrality gap for the uniform\nsparsest cut.","PeriodicalId":501216,"journal":{"name":"arXiv - CS - Discrete Mathematics","volume":"37 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-07-17","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"arXiv - CS - Discrete Mathematics","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/arxiv-2407.12230","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
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.