用于无线网络监测和分析的机器学习模型

P. Casas
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引用次数: 12

摘要

在过去几年中,连接到无线网络的智能手机数量和由这些设备产生的无线网络通信量急剧增加,这使得解决无线网络监控应用变得更具挑战性。当前网络监控系统提供的高维网络数据为大规模应用机器学习(ML)方法来改进不同的无线网络应用打开了大门。在本文中,我们评估和比较了用于蜂窝网络流量分析的不同ML模型,解决了与最终用户及其智能手机上运行的应用程序相关的两个不同且高度相关的问题:检测智能手机应用程序生成的异常和预测流行应用程序的体验质量(QoE)。我们考虑了广泛的ML模型,包括单个模型以及ML集成,如装袋,提升和堆叠。使用在操作网络和终端设备上捕获的真实蜂窝流量测量来评估所提出的模型。结果表明,基于决策树的模型最准确地解决了这些问题,而协作模型,特别是堆叠模型,能够显著提高分析的性能和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning models for wireless network monitoring and analysis
The number of smartphones connected to wireless networks and the volume of wireless network traffic generated by such devices have dramatically increased in the last few years, making it more challenging to tackle wireless network monitoring applications. The high-dimensionality of network data provided by current network monitoring systems opens the door to the massive application of Machine Learning (ML) approaches to improve different wireless networking applications. In this paper we evaluate and compare different ML models for the analysis of cellular network traffic, addressing two different and highly relevant problems linked to the end-users and the apps running on their smartphones: detection of anomalies generated by smartphone apps and prediction of Quality of Experience (QoE) for popular apps. We consider an extensive battery of ML models, including single models as well as ML ensembles such as bagging, boosting and stacking. Proposed models are evaluated using real cellular traffic measurements captured at operational networks and at the end devices. Results suggest that decision-tree based models are the most accurate to address these problems, and that collaborative models, in particular stacking ones, are capable to significantly increase performance and robustness of the analysis.
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