Planar and Minor-Free Metrics Embed into Metrics of Polylogarithmic Treewidth with Expected Multiplicative Distortion Arbitrarily Close to 1
Abstract
We prove that there is a randomized polynomial-time algorithm that given an edge-weighted graph G excluding a fixed-minor Q on n vertices and an accuracy parameter >0, constructs an edge-weighted graph~H and an embedding η V(G) V(H) with the following properties: * For any constant size Q, the treewidth of H is polynomial in -1, n, and the logarithm of the stretch of the distance metric in G. * The expected multiplicative distortion is (1+): for every pair of vertices u,v of G, we have distH(η(u),η(v))≥ distG(u,v) always and Exp[distH(η(u),η(v))]≤ (1+)distG(u,v). Our embedding is the first to achieve polylogarithmic treewidth of the host graph and comes close to the lower bound by Carroll and Goel, who showed that any embedding of a planar graph with O(1) expected distortion requires the host graph to have treewidth ( n). It also provides a unified framework for obtaining randomized quasi-polynomial-time approximation schemes for a variety of problems including network design, clustering or routing problems, in minor-free metrics where the optimization goal is the sum of selected distances. Applications include the capacitated vehicle routing problem, and capacitated clustering problems.
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