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Inferring Invisible Traffic

机译:推断无形流量

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摘要

A traffic matrix encompassing the entire Internet would be very valuable. Unfortunately, from any given vantage point in the network, most traffic is invisible. In this paper we describe results that hold some promise for this problem. First, we show a new characterization result: traffic matrices (TMs) typically show very low effective rank. This result refers to TMs that are purely spatial (have no temporal component), over a wide range of spatial granularities. Next, we define an inference problem whose solution allows one to infer invisible TM elements. This problem relies crucially on an atomicity property we define. Finally, we show example solutions of this inference problem via two different methods: regularized regression and matrix completion. The example consists of an AS inferring the amount of invisible traffic passing between other pairs of ASes. Using this example we illustrate the accuracy of the methods as a function of spatial granularity.
机译:涵盖整个互联网的流量矩阵将非常有价值。不幸的是,从网络中任何给定的有利位置来看,大多数流量都是不可见的。在本文中,我们描述了对这个问题有希望的结果。首先,我们展示了一个新的表征结果:流量矩阵(TM)通常显示出非常低的有效等级。此结果指的是在广泛的空间粒度范围内纯空间(没有时间成分)的TM。接下来,我们定义一个推理问题,其解决方案允许推理不可见的TM元素。这个问题主要取决于我们定义的原子性。最后,我们通过两种不同的方法显示此推理问题的示例解决方案:正则回归和矩阵完成。该示例由一个AS组成,该AS推断在其他AS对之间传递的不可见流量。使用此示例,我们说明了这些方法作为空间粒度函数的准确性。

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