Distributed Strong Diameter Network Decomposition
Michael Elkin, Ofer Neiman

TL;DR
This paper presents a novel distributed algorithm that constructs strong network decompositions with logarithmic parameters in polylogarithmic time, solving a longstanding open problem in distributed graph algorithms.
Contribution
It introduces a method to compute strong (O(log n), O(log n)) network decompositions in O(log^2 n) time, improving upon previous bounds and establishing new capabilities for distributed graph partitioning.
Findings
Strong (O(log n), O(log n)) network decompositions can be computed in O(log^2 n) time.
The paper provides a tradeoff between the parameters of the network decomposition.
The approach adapts the shifted shortest path method for distributed computation.
Abstract
For a pair of positive parameters , a partition of the vertex set of an -vertex graph into disjoint clusters of diameter at most each is called a network decomposition, if the supergraph , obtained by contracting each of the clusters of , can be properly -colored. The decomposition is said to be strong (resp., weak) if each of the clusters has strong (resp., weak) diameter at most , i.e., if for every cluster and every two vertices , the distance between them in the induced graph of (resp., in ) is at most . Network decomposition is a powerful construct, very useful in distributed computing and beyond. It was shown by Awerbuch \etal \cite{AGLP89} and Panconesi and Srinivasan \cite{PS92}, that strong $(2^{O(\sqrt{\log n})},2^{O(\sqrt{\log…
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Taxonomy
TopicsCarbon and Quantum Dots Applications · Metal-Organic Frameworks: Synthesis and Applications · Nanocluster Synthesis and Applications
