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首页> 外文期刊>LIPIcs : Leibniz International Proceedings in Informatics >Massively Parallel Approximate Distance Sketches
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Massively Parallel Approximate Distance Sketches

机译:大规模平行的近似距离草图

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Data structures that allow efficient distance estimation (distance oracles, distance sketches, etc.) have been extensively studied, and are particularly well studied in centralized models and classical distributed models such as CONGEST. We initiate their study in newer (and arguably more realistic) models of distributed computation: the Congested Clique model and the Massively Parallel Computation (MPC) model. We provide efficient constructions in both of these models, but our core results are for MPC. In MPC we give two main results: an algorithm that constructs stretch/space optimal distance sketches but takes a (small) polynomial number of rounds, and an algorithm that constructs distance sketches with worse stretch but that only takes polylogarithmic rounds. Along the way, we show that other useful combinatorial structures can also be computed in MPC. In particular, one key component we use to construct distance sketches are an MPC construction of the hopsets of [Elkin and Neiman, 2016]. This result has additional applications such as the first polylogarithmic time algorithm for constant approximate single-source shortest paths for weighted graphs in the low memory MPC setting.
机译:已经广泛研究了允许有效距离估计(距离Oracles,距离草图,距离草图等)的数据结构,并且在集中模型和诸如充满的经典分布式模型中特别良好地研究。我们在较新的(和可争议的更现实)的分布式计算模型中启动他们的研究:拥塞的集团模型和大规模并行计算(MPC)模型。我们在这两个模型中提供有效的结构,但我们的核心结果是MPC。在MPC中,我们给出了两个主要结果:一种构造拉伸/空间最佳距离草图的算法,但需要一个(小)多项式的圆数,以及用更糟糕的伸展构造距离草图的算法,但只接受PolyGarithmic Rounds。沿途,我们表明还可以在MPC中计算其他有用的组合结构。特别是,我们用于构造距离草图的一个关键组件是[Elkin和Neiman,2016]的Hopsets的MPC构造。该结果具有额外的应用,例如用于低存储器MPC设置中的加权图的恒定近似单源最短路径的第一积极算法。

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