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Inferring Applications at the Network Layer using Collective Traffic Statistics

机译:使用集体流量统计推断网络层上的应用程序

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摘要

In this paper, we propose a novel technique for inferring the distribution of application classes present in the aggregated traffic flows between endpoints, which exploits both the statistics of the traffic flows, and the spatial distribution of those flows across the network. Our method employs a two-step supervised model, where the bootstrapping step provides initial (inaccurate) inference on the traffic application classes, and the graph-based calibration step adjusts the initial inference through the collective spatial traffic distribution. In evaluations using real traffic flow measurements from a large ISP, we show how our method can accurately classify application types within aggregate traffic between endpoints, even without the knowledge of ports and other traffic features. While the bootstrap estimate classifies the aggregates with 80% accuracy, incorporating spatial distributions through calibration increases the accuracy to 92%, i.e., roughly halving the number of errors.
机译:在本文中,我们提出了一种新技术来推断存在于端点之间的聚合流量中的应用程序类别的分布,该技术既利用了流量的统计信息,又利用了这些流量在网络中的空间分布。我们的方法采用了两步监督模型,其中自举步骤提供了有关交通应用类别的初始(不准确)推断,而基于图的校准步骤则通过集合空间交通分布调整了初始推断。在使用来自大型ISP的真实流量测量结果进行的评估中,我们展示了即使在不了解端口和其他流量功能的情况下,我们的方法也可以在端点之间的聚合流量中准确地对应用程序类型进行分类。引导估计以80%的准确度对聚合进行分类时,通过校准合并空间分布可将准确度提高到92%,即,错误数量大约减半。

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