{"title":"渐近一致性和近似一致性的紧界","authors":"Matthias Függer, Thomas Nowak, Manfred Schwarz","doi":"10.1145/3212734.3212762","DOIUrl":null,"url":null,"abstract":"We study the performance of asymptotic and approximate consensus algorithms under harsh environmental conditions. The asymptotic consensus problem requires a set of agents to repeatedly set their outputs such that the outputs converge to a common value within the convex hull of initial values. This problem, and the related approximate consensus problem, are fundamental building blocks in distributed systems where exact consensus among agents is not required or possible, e.g., man-made distributed control systems, and have applications in the analysis of natural distributed systems, such as flocking and opinion dynamics. We prove tight lower bounds on the contraction rates of asymptotic consensus algorithms in dynamic networks, from which we deduce bounds on the time complexity of approximate consensus algorithms. In particular, the obtained bounds show optimality of asymptotic and approximate consensus algorithms presented in [Charron-Bost et al., ICALP'16] for certain dynamic networks, including the weakest dynamic network model in which asymptotic and approximate consensus are solvable. As a corollary we also obtain asymptotically tight bounds for asymptotic consensus in the classical asynchronous model with crashes. Central to our lower bound proofs is an extended notion of valency, the set of reachable limits of an asymptotic consensus algorithm starting from a given configuration. We further relate topological properties of valencies to the solvability of exact consensus, shedding some light on the relation of these three fundamental problems in dynamic networks.","PeriodicalId":198284,"journal":{"name":"Proceedings of the 2018 ACM Symposium on Principles of Distributed Computing","volume":null,"pages":null},"PeriodicalIF":0.0000,"publicationDate":"2017-05-08","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"19","resultStr":"{\"title\":\"Tight Bounds for Asymptotic and Approximate Consensus\",\"authors\":\"Matthias Függer, Thomas Nowak, Manfred Schwarz\",\"doi\":\"10.1145/3212734.3212762\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"We study the performance of asymptotic and approximate consensus algorithms under harsh environmental conditions. The asymptotic consensus problem requires a set of agents to repeatedly set their outputs such that the outputs converge to a common value within the convex hull of initial values. This problem, and the related approximate consensus problem, are fundamental building blocks in distributed systems where exact consensus among agents is not required or possible, e.g., man-made distributed control systems, and have applications in the analysis of natural distributed systems, such as flocking and opinion dynamics. We prove tight lower bounds on the contraction rates of asymptotic consensus algorithms in dynamic networks, from which we deduce bounds on the time complexity of approximate consensus algorithms. In particular, the obtained bounds show optimality of asymptotic and approximate consensus algorithms presented in [Charron-Bost et al., ICALP'16] for certain dynamic networks, including the weakest dynamic network model in which asymptotic and approximate consensus are solvable. 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引用次数: 19
摘要
我们研究了在恶劣环境条件下渐近一致算法和近似一致算法的性能。渐近共识问题要求一组智能体反复设置它们的输出,使输出收敛于初始值凸包内的一个公共值。这个问题,以及相关的近似共识问题,是分布式系统的基本组成部分,在分布式系统中,agent之间不需要或不可能有精确的共识,例如人造分布式控制系统,并且在分析自然分布式系统中有应用,例如群集和意见动态。证明了动态网络中渐近一致性算法的收缩率的紧下界,并由此导出了近似一致性算法的时间复杂度的上界。特别是,所得到的界显示了[Charron-Bost et al., ICALP'16]中提出的渐近一致性和近似一致性算法对于某些动态网络的最优性,包括渐近一致性和近似一致性可解的最弱动态网络模型。作为一个推论,我们也得到了经典的带崩溃的异步模型的渐近一致性的渐近紧界。下界证明的核心是价的扩展概念,即从给定构型出发的渐近一致算法的可达极限集。我们进一步将价的拓扑性质与精确一致的可解性联系起来,揭示了动态网络中这三个基本问题的关系。
Tight Bounds for Asymptotic and Approximate Consensus
We study the performance of asymptotic and approximate consensus algorithms under harsh environmental conditions. The asymptotic consensus problem requires a set of agents to repeatedly set their outputs such that the outputs converge to a common value within the convex hull of initial values. This problem, and the related approximate consensus problem, are fundamental building blocks in distributed systems where exact consensus among agents is not required or possible, e.g., man-made distributed control systems, and have applications in the analysis of natural distributed systems, such as flocking and opinion dynamics. We prove tight lower bounds on the contraction rates of asymptotic consensus algorithms in dynamic networks, from which we deduce bounds on the time complexity of approximate consensus algorithms. In particular, the obtained bounds show optimality of asymptotic and approximate consensus algorithms presented in [Charron-Bost et al., ICALP'16] for certain dynamic networks, including the weakest dynamic network model in which asymptotic and approximate consensus are solvable. As a corollary we also obtain asymptotically tight bounds for asymptotic consensus in the classical asynchronous model with crashes. Central to our lower bound proofs is an extended notion of valency, the set of reachable limits of an asymptotic consensus algorithm starting from a given configuration. We further relate topological properties of valencies to the solvability of exact consensus, shedding some light on the relation of these three fundamental problems in dynamic networks.