随机通信中的扩展图质量优化

P. Poonpakdee, G. D. Fatta
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引用次数: 4

摘要

流行病协议为大型和极端规模的网络系统提供了随机通信和计算范式,可用于构建分散和容错服务。它们最近被提出用于在极端规模环境中制定知识发现算法。在分布式系统中,它们依赖于成员协议来提供对等抽样服务。流行成员协议诱导网络覆盖拓扑,随着时间的推移不断演变,迅速收敛到随机图。本文研究了由流行成员协议引起的一系列网络覆盖拓扑的扩展特性。采用搜索启发式算法设计了一种新的流行病隶属度协议。提出的扩展器成员协议明确旨在提高覆盖拓扑的扩展质量,并引入连接恢复机制来克服已知的多个连接组件的问题。对比分析表明,该协议比现有协议具有更快的随机图收敛速度和更强的拓扑连通性鲁棒性,从而在全局聚合任务中具有更好的总体性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Expander Graph Quality Optimisation in Randomised Communication
Epidemic protocols provide a randomised communication and computation paradigm for large and extreme-scale networked systems and can be adopted to build decentralised and fault-tolerant services. They have recently been proposed for the formulation of knowledge discovery algorithms in extreme scale environments. In distributed systems they rely on membership protocols to provide a peer sampling service. Epidemic membership protocols induce a network overlay topology that continuously evolves over time, quickly converging to random graphs. This work investigates the expansion property of the series of network overlay topologies induced by epidemic membership protocols. A search heuristic is adopted for the design of a novel epidemic membership protocol. The proposed Expander Membership Protocol explicitly aims at improving the expansion quality of the overlay topologies and incorporates a connectivity recovery mechanism to overcome the known issue of multiple connected components. In the comparative analysis the proposed protocol shows a faster convergence to random graphs and greater topology connectivity robustness than the state of the art protocols, resulting in an overall better performance of global aggregation tasks.
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