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Making Self-Stabilizing any Locally Greedy Problem

31 August 2022
Johanne Cohen
Laurence Pilard
Mikael Rabie
Jonas Sénizergues
ArXiv (abs)PDFHTML
Abstract

We propose a way to transform synchronous distributed algorithms solving locally greedy and mendable problems into self-stabilizing algorithms in anonymous networks. Mendable problems are a generalization of greedy problems where any partial solution may be transformed -- instead of completed -- into a global solution: every time we extend the partial solution we are allowed to change the previous partial solution up to a given distance. Locally here means that to extend a solution for a node, we need to look at a constant distance from it. In order to do this, we propose the first explicit self-stabilizing algorithm computing a (k,k−1)(k,k-1)(k,k−1)-ruling set (i.e. a "maximal independent set at distance kkk"). By combining multiple time this technique, we compute a distance-KKK coloring of the graph. With this coloring we can finally simulate \local~model algorithms running in a constant number of rounds, using the colors as unique identifiers. Our algorithms work under the Gouda daemon, which is similar to the probabilistic daemon: if an event should eventually happen, it will occur under this daemon.

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