Distributed Symmetry Breaking on Power Graphs via Sparsification
Yannic Maus, Saku Peltonen, Jara Uitto

TL;DR
This paper introduces efficient distributed algorithms for symmetry breaking in power graphs, achieving exponential improvements in runtime for ruling sets and simplifying existing methods, with broad applications in distributed computing.
Contribution
The paper presents a deterministic polylogarithmic time algorithm for computing k-ruling sets in power graphs, along with a novel sparsification technique and simplified algorithms for MIS and ruling sets.
Findings
Deterministic polylogarithmic time algorithm for k-ruling sets in power graphs
Exponential runtime improvements over previous methods for k > 1
Simplified algorithms for MIS and ruling sets in power graphs
Abstract
In this paper, we present efficient distributed algorithms for classical symmetry breaking problems, maximal independent sets (MIS) and ruling sets, in power graphs. We work in the standard CONGEST model of distributed message passing, where the communication network is abstracted as a graph . Typically, the problem instance in CONGEST is identical to the communication network , that is, we perform the symmetry breaking in . In this work, we consider a setting where the problem instance corresponds to a power graph , where each node of the communication network is connected to all of its -hop neighbors. Our main contribution is a deterministic polylogarithmic time algorithm for computing -ruling sets of , which (for ) improves exponentially on the current state-of-the-art runtimes. The main technical ingredient for this result is a deterministic…
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Taxonomy
TopicsComplexity and Algorithms in Graphs · Nanocluster Synthesis and Applications · Markov Chains and Monte Carlo Methods
