Near-optimal leader election in population protocols on graphs
Alistarh D-A, Rybicki J, Voitovych S. 2025. Near-optimal leader election in population protocols on graphs. Distributed Computing.
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Abstract
In the stochastic population protocol model, we are given a connected graph with n nodes, and in every time step, a scheduler samples an edge of the graph uniformly at random and the nodes connected by this edge interact. A fundamental task in this model is stable leader election, in which all nodes start in an identical state and the aim is to reach a configuration in which (1)
exactly one node is elected as leader and (2) this node remains as the unique leader no matter what sequence of interactions follows. On cliques, the complexity of this problem has recently been settled: time-optimal protocols stabilize in (n log n) expected steps using (log log n) states, whereas protocols that use O(1) states require (n2) expected steps. In this work, we investigate the complexity of stable leader election on graphs. We provide the first non-trivial time lower bounds on general graphs, showing that, when moving beyond cliques, the complexity of stable leader election can range from O(1) to (n3) expected steps. We describe a protocol that is time-optimal on many graph families, but uses polynomially-many states. In contrast, we give a near-time-optimal protocol that uses only O(log2 n) states that is at most a factor O(log n) slower. Finally, we observe that for many graphs the constant-state protocol of Beauquier et al. [OPODIS 2013] is at most a factor O(n log n) slower than the fast polynomial-state protocol, and among constant-state protocols, this protocol has near-optimal average case complexity on dense random graphs.
Publishing Year
Date Published
2025-06-27
Journal Title
Distributed Computing
Publisher
Springer Nature
Acknowledgement
We thank all anonymous reviewers for their helpful comments. We would also like to thank Jakob Solnerzik and Olivier Stietel for catching some errors in the proofs. Open Access funding enabled and organized by Projekt DEAL. We gratefully acknowledge funding from the European Research Council (ERC) under the European Union’s Horizon 2020 research and innovation programme (grant agreement No 805223 ScaleML).
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Cite this
Alistarh D-A, Rybicki J, Voitovych S. Near-optimal leader election in population protocols on graphs. Distributed Computing. 2025. doi:10.1007/s00446-025-00487-7
Alistarh, D.-A., Rybicki, J., & Voitovych, S. (2025). Near-optimal leader election in population protocols on graphs. Distributed Computing. Springer Nature. https://doi.org/10.1007/s00446-025-00487-7
Alistarh, Dan-Adrian, Joel Rybicki, and Sasha Voitovych. “Near-Optimal Leader Election in Population Protocols on Graphs.” Distributed Computing. Springer Nature, 2025. https://doi.org/10.1007/s00446-025-00487-7.
D.-A. Alistarh, J. Rybicki, and S. Voitovych, “Near-optimal leader election in population protocols on graphs,” Distributed Computing. Springer Nature, 2025.
Alistarh D-A, Rybicki J, Voitovych S. 2025. Near-optimal leader election in population protocols on graphs. Distributed Computing.
Alistarh, Dan-Adrian, et al. “Near-Optimal Leader Election in Population Protocols on Graphs.” Distributed Computing, Springer Nature, 2025, doi:10.1007/s00446-025-00487-7.
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