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A Machine Learning Application for Latency Prediction in Operational 4G Networks

机译:操作4G网络延迟预测的机器学习应用

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Measuring performance on Internet is always challenging. When it comes to the mobile networks, the variety of technology characteristics coupled with the opaque network configuration make the performance evaluation even a more difficult task. Latency is one of the aspects having the largest impact on the performance and on the end users' Quality of Experience. In this paper, we present a machine learning approach that, exploiting real mobile network data on the end user, try to predict the latency in a real operational network. We consider a large-scale dataset with more than 238 million latency measurements coming from 3 different commercial mobile operators. The presented methodology flattens the RTT values into several bins, turning the latency prediction problem to a multi-label classification problem. Then, three well-known supervised algorithms are exploited to predict the latency. The obtained results highlight the importance of representative dataset from operational network. It calls for further improvements on the algorithm selection, tuning, and their predictive capabilities.
机译:在互联网上测量表现始终具有挑战性。涉及到移动网络时,各种技术特性与不透明网络配置耦合,使得性能评估甚至更加艰巨的任务。延迟是对性能和最终用户的体验质量影响最大的方面之一。在本文中,我们展示了一种机器学习方法,即利用最终用户的真实移动网络数据,尝试预测实际操作网络中的延迟。我们考虑一个大型数据集,来自32800万多个不同的商业移动运营商的延迟测量。呈现的方法将RTT值达到几个箱,将延迟预测问题转换为多标签分类问题。然后,利用了三种众所周知的监督算法来预测延迟。所获得的结果突出了来自运营网络的代表性数据集的重要性。它要求进一步改进算法选择,调整及其预测功能。

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