Graph Sparsification for Derandomizing Massively Parallel Computation with Low Space

A. Czumaj, Peter Davies, M. Parter
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引用次数: 4

Abstract

The Massively Parallel Computation (MPC) model is an emerging model that distills core aspects of distributed and parallel computation, developed as a tool to solve combinatorial (typically graph) problems in systems of many machines with limited space. Recent work has focused on the regime in which machines have sublinear (in n, the number of nodes in the input graph) space, with randomized algorithms presented for the fundamental problems of Maximal Matching and Maximal Independent Set. However, there have been no prior corresponding deterministic algorithms. A major challenge underlying the sublinear space setting is that the local space of each machine might be too small to store all edges incident to a single node. This poses a considerable obstacle compared to classical models in which each node is assumed to know and have easy access to its incident edges. To overcome this barrier, we introduce a new graph sparsification technique that deterministically computes a low-degree subgraph, with the additional property that solving the problem on this subgraph provides significant progress towards solving the problem for the original input graph. Using this framework to derandomize the well-known algorithm of Luby [SICOMP’86], we obtain O(log Δ + log log n)-round deterministic MPC algorithms for solving the problems of Maximal Matching and Maximal Independent Set with O(nɛ) space on each machine for any constant ɛ > 0. These algorithms also run in O(log Δ) rounds in the closely related model of CONGESTED CLIQUE, improving upon the state-of-the-art bound of O(log 2Δ) rounds by Censor-Hillel et al. [DISC’17].
低空间非随机化大规模并行计算的图稀疏化
大规模并行计算(MPC)模型是一个新兴的模型,它提取了分布式和并行计算的核心方面,作为解决空间有限的多机器系统中的组合(典型的图)问题的工具而发展起来。最近的工作集中在机器具有次线性(n,输入图中的节点数)空间的状态,并为最大匹配和最大独立集的基本问题提供了随机算法。然而,目前还没有相应的确定性算法。亚线性空间设置的一个主要挑战是,每台机器的本地空间可能太小,无法存储与单个节点相关的所有边。与经典模型相比,这构成了相当大的障碍,在经典模型中,每个节点都假设知道并容易访问其事件边。为了克服这一障碍,我们引入了一种新的图稀疏化技术,该技术确定地计算低度子图,其附加特性是在该子图上解决问题为解决原始输入图的问题提供了重大进展。利用该框架对Luby [SICOMP ' 86]的著名算法进行非随机化,我们得到了O(log Δ + log log n)轮确定性MPC算法,用于解决每台机器上任意常数为O(n * *)空间的最大匹配和最大独立集问题。这些算法在密切相关的拥挤CLIQUE模型中也以O(log Δ)轮运行,改进了由cenor - hillel等人提出的O(log 2Δ)轮的最先进边界[DISC ' 17]。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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