基于网络流量的物联网事件分类

Batyr Charyyev, M. H. Gunes
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引用次数: 21

摘要

物联网(IoT)由传感器和执行器组成,为我们日常生活的许多方面提供便利。与笔记本电脑和智能手机等典型的计算设备相比,这些设备的功能和状态非常有限。研究人员已经证明,可以从其网络流量推断设备类型。在本文中,我们展示了嗅探物联网设备的网络流量的外部观察者可以通过使用机器学习分类器进一步对设备事件进行分类,从而推断用户操作。我们评估和比较了十种机器学习算法在分类来自39个不同设备的128个设备事件中的性能。我们分析了通过LAN和WAN以及控制器(如Alexa语音助手)对设备操作的正确分类的用户交互的影响。我们还检查了设备所在区域是否会影响分类器的性能,因为研究人员已经表明,不同的隐私限制会导致不同的外部通信。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IoT Event Classification Based on Network Traffic
The Internet of Things (IoT) consists of sensors and actuators that facilitate many aspects of our daily life. Compared to typical computing devices such as laptops and smartphones, these devices have a very limited set of functionalities and states. Researchers have shown that it is possible to infer the device type from its network traffic. In this paper, we show that an external observer that sniffs the network traffic of an IoT device can further classify device events and hence infer user actions by employing machine learning classifiers. We evaluate and compare the performance of ten machine learning algorithms in classifying 128 device events from 39 different devices. We analyze the impact of the user interaction through LAN and WAN as well as controllers such as Alexa voice assistant on the correct classification of device actions. We also inspect whether the region from which the device is impacts the performance of classifiers as researchers have shown that differing privacy restrictions lead to different external communications.
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