A Deterministic Almost-Tight Distributed Algorithm for Approximating Single-Source Shortest Paths
Monika Henzinger, Sebastian Krinninger, Danupon Nanongkai

TL;DR
This paper introduces the first deterministic distributed algorithm for approximating single-source shortest paths with near-optimal time complexity, improving previous randomized algorithms and nearly matching theoretical lower bounds.
Contribution
It presents a novel deterministic approach for approximate shortest paths in distributed networks, including techniques replacing probabilistic methods and constructing hop sets efficiently.
Findings
Deterministic $(1+o(1))$-approximation algorithm with near-optimal running time.
Improves upon previous randomized algorithms by a significant factor.
Nearly matches known lower bounds for the problem.
Abstract
We present a deterministic -approximation -time algorithm for solving the single-source shortest paths problem on distributed weighted networks (the CONGEST model); here is the number of nodes in the network and is its (hop) diameter. This is the first non-trivial deterministic algorithm for this problem. It also improves (i) the running time of the randomized -approximation -time algorithm of Nanongkai [STOC 2014] by a factor of as large as , and (ii) the -approximation factor of Lenzen and Patt-Shamir's -time algorithm [STOC 2013] within the same running time. Our running time matches the known time lower bound of [Elkin STOC 2004] up to subpolynomial factors, thus essentially settling the status of…
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