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Delay Analysis of Epidemic Schemes in Sparse and Dense Heterogeneous Contact Networks

机译:稀疏和密集异构接触网络中流行方案的时延分析

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摘要

Epidemic algorithms have found their way into many areas of computer science, such as databases and distributed systems, and recently for communication in Opportunistic or Delay Tolerant Networks (DTNs). To ensure analytical tractability, existing analyses of epidemic spreading predominantly consider homogeneous contact rates between nodes. However, this assumption is generally not true in real scenarios. In this paper, we consider classes of contact/mobility models with heterogeneous contact rates. Through an asymptotic analysis, we prove that a first-order, mean value approximation for the basic epidemic spreading step becomes exact in the limiting case (large network size). We further derive simple closed form approximations, based on higher order statistics of the mobility heterogeneity, for the case of finite-size networks. To demonstrate the utility of our results, we use them to predict the delay of epidemic-based routing schemes and analyze scenarios with node selfishness. We validate the analytic results through extensive simulations on synthetic scenarios, as well as on real traces to demonstrate that our expressions can be useful also in scenarios with significantly more complex structure. We believe these results are an important step forward towards analyzing the effects of heterogeneity (of mobility and/or other characteristics) on the performance of epidemic-based algorithms.
机译:流行病算法已进入计算机科学的许多领域,例如数据库和分布式系统,并且最近在机会主义或时延容忍网络(DTN)中进行通信。为了确保分析的易处理性,现有的流行病传播分析主要考虑节点之间的均一接触率。但是,这种假设通常在真实情况下是不正确的。在本文中,我们考虑具有不同接触率的接触/机动模型。通过渐近分析,我们证明了基本流行病传播步骤的一阶均值逼近在极限情况(大型网络)中变得精确。对于有限大小的网络,我们基于移动性异质性的高阶统计进一步得出简单的闭合形式近似。为了证明我们的结果的实用性,我们使用它们来预测基于流行病的路由方案的延迟,并分析节点自私的情况。我们通过对合成场景以及真实迹线进行广泛的仿真来验证分析结果,以证明我们的表达式在结构非常复杂的场景中也很有用。我们认为,这些结果是朝着分析(基于流动性和/或其他特征的)异质性对基于流行病的算法的性能迈出的重要一步。

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