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Bayesian inference of network loss characteristics with applications to TCP performance prediction

机译:网络损失特征的贝叶斯推断及其在TCP性能预测中的应用

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Network tomography, inferring internal network behavior based on the "external" end-to-end network measurements, is of particular interest when the network itself can not cooperate in characterizing its own behavior. In particular, it is impractical to directly measure packet losses or delays at every router. On the other hand, measuring end-to-end (from sources to receivers) losses is relatively easy. In this paper, the problems of characterizing links behavior in a network is formulated as Bayesian inference problems and develop several Markov chain Monte Carlo (MCMC) algorithms to solve them. The proposed link loss algorithms are then applied to data generated by the network simulator (NS2) software, and obtain good agreements between the theoretical results and the actual measurements.
机译:当网络本身无法配合表征其自身行为时,网络层析成像特别可引起人们的兴趣,网络层析成像基于“外部”端到端网络测量来推断内部网络行为。特别地,直接测量每个路由器上的分组丢失或延迟是不切实际的。另一方面,测量端到端(从源到接收器)的损耗相对容易。本文将表征网络中链接行为的问题表述为贝叶斯推理问题,并开发了几种马尔可夫链蒙特卡罗(MCMC)算法来解决这些问题。然后,将所提出的链路丢失算法应用于网络模拟器(NS2)软件生成的数据,并在理论结果与实际测量之间取得良好的一致性。

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