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Brief Announcement: Memory Lower Bounds for Self-Stabilization

Authors Lélia Blin , Laurent Feuilloley , Gabriel Le Bouder



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Author Details

Lélia Blin
  • Sorbonne Université, CNRS, Université Evry-Val d'Essonne, LIP6 UMR 7606, Paris
Laurent Feuilloley
  • Sorbonne Université, CNRS, LIP6 UMR 7606, Paris
Gabriel Le Bouder
  • Sorbonne Université, CNRS, ENS Paris-Saclay, LIP6 UMR 7606, Paris

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Lélia Blin, Laurent Feuilloley, and Gabriel Le Bouder. Brief Announcement: Memory Lower Bounds for Self-Stabilization. In 33rd International Symposium on Distributed Computing (DISC 2019). Leibniz International Proceedings in Informatics (LIPIcs), Volume 146, pp. 37:1-37:3, Schloss Dagstuhl – Leibniz-Zentrum für Informatik (2019)
https://doi.org/10.4230/LIPIcs.DISC.2019.37

Abstract

In the context of self-stabilization, a silent algorithm guarantees that the communication registers (a.k.a register) of every node do not change once the algorithm has stabilized. At the end of the 90’s, Dolev et al. [Acta Inf. '99] showed that, for finding the centers of a graph, for electing a leader, or for constructing a spanning tree, every silent deterministic algorithm must use a memory of Omega(log n) bits per register in n-node networks. Similarly, Korman et al. [Dist. Comp. '07] proved, using the notion of proof-labeling-scheme, that, for constructing a minimum-weight spanning tree (MST), every silent algorithm must use a memory of Omega(log^2n) bits per register. It follows that requiring the algorithm to be silent has a cost in terms of memory space, while, in the context of self-stabilization, where every node constantly checks the states of its neighbors, the silence property can be of limited practical interest. In fact, it is known that relaxing this requirement results in algorithms with smaller space-complexity. In this paper, we are aiming at measuring how much gain in terms of memory can be expected by using arbitrary deterministic self-stabilizing algorithms, not necessarily silent. To our knowledge, the only known lower bound on the memory requirement for deterministic general algorithms, also established at the end of the 90’s, is due to Beauquier et al. [PODC '99] who proved that registers of constant size are not sufficient for leader election algorithms. We improve this result by establishing the lower bound Omega(log log n) bits per register for deterministic self-stabilizing algorithms solving (Delta+1)-coloring, leader election or constructing a spanning tree in networks of maximum degree Delta.

Subject Classification

ACM Subject Classification
  • Theory of computation → Distributed computing models
Keywords
  • Space lower bound
  • memory tight bound
  • deterministic self-stabilization
  • leader election
  • anonymous
  • identifiers
  • state model
  • ring

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References

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