Uniform node sampling service robust against collusions of malicious nodes

E. Anceaume, Yann Busnel, B. Sericola
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引用次数: 10

Abstract

We consider the problem of achieving uniform node sampling in large scale systems in presence of a strong adversary. We first propose an omniscient strategy that processes on the fly an unbounded and arbitrarily biased input stream made of node identifiers exchanged within the system, and outputs a stream that preserves Uniformity and Freshness properties. We show through Markov chains analysis that both properties hold despite any arbitrary bias introduced by the adversary. We then propose a knowledge-free strategy and show through extensive simulations that this strategy accurately approximates the omniscient one. We also evaluate its resilience against a strong adversary by studying two representative attacks (flooding and targeted attacks). We quantify the minimum number of identifiers that the adversary must insert in the input stream to prevent uniformity. To our knowledge, such an analysis has never been proposed before.
统一节点采样服务对恶意节点合谋具有鲁棒性
我们考虑了在存在强对手的大型系统中实现均匀节点采样的问题。我们首先提出了一种全知策略,该策略可以动态处理由系统内交换的节点标识符组成的无界和任意偏差的输入流,并输出一个保留一致性和新鲜度属性的流。我们通过马尔可夫链分析表明,尽管对手引入了任意偏见,但这两种性质都保持不变。然后,我们提出了一种无知识策略,并通过广泛的模拟表明,该策略准确地接近全知策略。我们还通过研究两种典型攻击(洪水攻击和目标攻击)来评估其对强大对手的恢复能力。我们量化了攻击者必须在输入流中插入的标识符的最小数量,以防止一致性。据我们所知,以前从未有人提出过这样的分析。
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