Optimal Padded Decomposition For Bounded Treewidth Graphs
Arnold Filtser, Tobias Friedrich, Davis Issac, Nikhil Kumar, Hung Le, Nadym Mallek, Ziena Zeif

TL;DR
This paper introduces a padded decomposition with optimal parameters for graphs of bounded treewidth, significantly improving algorithmic bounds related to flow, cuts, and embeddings.
Contribution
It constructs a padded decomposition with $O( ext{treewidth})$ padding parameter, matching the conjectured optimal bound, and applies it to improve multiple algorithmic problems.
Findings
Padded decomposition with $O( ext{treewidth})$ padding parameter.
Exponential improvement in flow-cut gap and multicut ratios.
Enhanced approximation and embedding bounds for bounded treewidth graphs.
Abstract
A -padded decomposition of an edge-weighted graph is a stochastic decomposition into clusters of diameter at most such that for every vertex , the probability that is entirely contained in the cluster containing is at least for every . Padded decompositions have been studied for decades and have found numerous applications, including metric embedding, multicommodity flow-cut gap, multicut, and zero extension problems, to name a few. In these applications, parameter , called the padding parameter, is the most important parameter since it decides either the distortion or the approximation ratios. For general graphs with vertices, . Klein, Plotkin, and Rao showed that -minor-free graphs have padding parameter $\beta =…
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