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Refined Mean Field Analysis: The Gossip Shuffle Protocol Revisited

机译:改进的平均场分析:八卦洗牌协议

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Gossip protocols form the basis of many smart collective adaptive systems. They are a class of fully decentralised, simple but robust protocols for the distribution of information throughout large scale networks with hundreds or thousands of nodes. Mean field analysis methods have made it possible to approximate and analyse performance aspects of such large scale protocols in an efficient way that is independent of the number of nodes in the network. Taking the gossip shuffle protocol as a benchmark, we evaluate a recently developed refined mean field approach. We illustrate the gain in accuracy this can provide for the analysis of medium size models analysing two key performance measures: replication and coverage. We also show that refined mean field analysis requires special attention to correctly capture the coordination aspects of the gossip shuffle protocol.
机译:八卦协议构成许多智能集体自适应系统的基础。它们是一类完全分散的,简单但健壮的协议,用于在具有数百或数千个节点的大型网络中分布信息。平均场分析方法使得有可能以与网络中的节点数量无关的有效方式来近似和分析这种大规模协议的性能方面。以八卦洗牌协议为基准,我们评估了最近开发的改进的均值场方法。我们说明了准确性的提高,这可以为分析两个关键性能指标的中等规模模型提供分析:复制和覆盖率。我们还表明,改进的均值场分析需要特别注意才能正确捕获八卦洗牌协议的协调方面。

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