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Know your Big Data Trade-offs when Classifying Encrypted Mobile Traffic with Deep Learning

机译:在使用深度学习对加密的移动流量进行分类时,了解您的大数据权衡

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The spread of handheld devices has led to the unprecedented growth of traffic volumes traversing both local networks and the Internet, appointing mobile traffic classification as a key tool for gathering highly-valuable profiling information, other than traffic engineering and service management. However, the nature of mobile traffic severely challenges state-of-art Machine-Learning (ML) approaches, since the quickly evolving and expanding set of apps generating traffic hinders ML-based approaches, that require domain-expert design. Deep Learning (DL) represents a promising solution to this issue, but results in higher completion times, in turn suggesting the application of the Big-Data (BD) paradigm. In this paper, we investigate for the first time BD-enabled classification of encrypted mobile traffic using DL from a general standpoint, (a) defining general design guidelines, (b) leveraging a public-cloud platform, and (c) resorting to a realistic experimental setup. We found that, while BD represents a transparent accelerator for some tasks, this is not the case for the training phase of DL architectures for traffic classification, requiring a specific BD-informed design. The experimental setup is built upon a three-dimensional investigation path in the BD adoption, namely: (i) completion time, (ii) deployment costs, and (iii) classification performance, highlighting relevant non-trivial trade-offs.
机译:手持设备的普及已导致遍历本地网络和Internet的流量前所未有的增长,除了流量工程和服务管理之外,移动流量分类被指定为收集高价值概要信息的关键工具。但是,移动流量的性质严重挑战了最新的机器学习(ML)方法,因为生成流量的快速发展和扩展的应用程序集阻碍了需要领域专家设计的基于ML的方法。深度学习(DL)代表了该问题的有前途的解决方案,但导致完成时间更长,从而暗示了大数据(BD)范式的应用。在本文中,我们从一般的角度首次研究了使用DL的BD支持的加密移动流量分类,(a)定义了通用设计指南,(b)利用公共云平台,以及(c)诉诸于A。现实的实验设置。我们发现,虽然BD代表某些任务的透明加速器,但对于DL体系结构进行流量分类的训练阶段却并非如此,这需要特定的BD信息化设计。实验装置建立在BD采用的三维调查路径上,即:(i)完成时间,(ii)部署成本和(iii)分类性能,突出了相关的非平凡权衡。

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