Deterministic Distributed Sparse and Ultra-Sparse Spanners and Connectivity Certificates
April 29, 2022 Β· Declared Dead Β· π ACM Symposium on Parallelism in Algorithms and Architectures
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Authors
Marcel Bezdrighin, Michael Elkin, Mohsen Ghaffari, Christoph Grunau, Bernhard Haeupler, Saeed Ilchi, VΓ‘clav RozhoΕ
arXiv ID
2204.14086
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.DC
Citations
9
Venue
ACM Symposium on Parallelism in Algorithms and Architectures
Last Checked
4 months ago
Abstract
This paper presents efficient distributed algorithms for a number of fundamental problems in the area of graph sparsification: We provide the first deterministic distributed algorithm that computes an ultra-sparse spanner in $\textrm{polylog}(n)$ rounds in weighted graphs. Concretely, our algorithm outputs a spanning subgraph with only $n+o(n)$ edges in which the pairwise distances are stretched by a factor of at most $O(\log n \;\cdot\; 2^{O(\log^* n)})$. We provide a $\textrm{polylog}(n)$-round deterministic distributed algorithm that computes a spanner with stretch $(2k-1)$ and $O(nk + n^{1 + 1/k} \log k)$ edges in unweighted graphs and with $O(n^{1 + 1/k} k)$ edges in weighted graphs. We present the first $\textrm{polylog}(n)$-round randomized distributed algorithm that computes a sparse connectivity certificate. For an $n$-node graph $G$, a certificate for connectivity $k$ is a spanning subgraph $H$ that is $k$-edge-connected if and only if $G$ is $k$-edge-connected, and this subgraph $H$ is called sparse if it has $O(nk)$ edges. Our algorithm achieves a sparsity of $(1 + o(1))nk$ edges, which is within a $2(1 + o(1))$ factor of the best possible.
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