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Non-local Probes Do Not Help with Many Graph Problems

机译:非本地探针不能解决许多图形问题

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This work bridges the gap between distributed and centralised models of computing in the context of sublinear-time graph algorithms. A priori, typical centralised models of computing (e.g., parallel decision trees or centralised local algorithms) seem to be much more powerful than distributed message-passing algorithms: centralised algorithms can directly probe any part of the input, while in distributed algorithms nodes can only communicate with their immediate neighbours. We show that for a large class of graph problems, this extra freedom does not help centralised algorithms at all: efficient stateless deterministic centralised local algorithms can be simulated with efficient distributed message-passing algorithms. In particular, this enables us to transfer existing lower bound results from distributed algorithms to centralised local algorithms.
机译:在亚线性时间图算法的背景下,这项工作弥合了分布式和集中式计算模型之间的鸿沟。先验的,典型的集中式计算模型(例如,并行决策树或集中式本地算法)似乎比分布式消息传递算法强大得多:集中式算法可以直接探测输入的任何部分,而在分布式算法中,节点只能与他们的近邻沟通。我们表明,对于一大类图问题,这种额外的自由根本无法帮助集中式算法:可以使用高效的分布式消息传递算法来模拟高效的无状态确定性集中式本地算法。特别是,这使我们能够将现有的下限结果从分布式算法转移到集中式本地算法。

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