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Improved Parallel Algorithms for Spanners and Hopsets

Authors :
Miller, Gary L.
Peng, Richard
Vladu, Adrian
Xu, Shen Chen
Publication Year :
2013

Abstract

We use exponential start time clustering to design faster and more work-efficient parallel graph algorithms involving distances. Previous algorithms usually rely on graph decomposition routines with strict restrictions on the diameters of the decomposed pieces. We weaken these bounds in favor of stronger local probabilistic guarantees. This allows more direct analyses of the overall process, giving: * Linear work parallel algorithms that construct spanners with $O(k)$ stretch and size $O(n^{1+1/k})$ in unweighted graphs, and size $O(n^{1+1/k} \log k)$ in weighted graphs. * Hopsets that lead to the first parallel algorithm for approximating shortest paths in undirected graphs with $O(m\;\mathrm{polylog}\;n)$ work.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1309.3545
Document Type :
Working Paper