论文标题

用于在边缘的物联网设备识别的ML模型重新培训的情况

The Case for Retraining of ML Models for IoT Device Identification at the Edge

论文作者

Kolcun, Roman, Popescu, Diana Andreea, Safronov, Vadim, Yadav, Poonam, Mandalari, Anna Maria, Xie, Yiming, Mortier, Richard, Haddadi, Hamed

论文摘要

众所周知,这些设备是许多安全问题的来源,因此它们将从自动化管理中受益匪浅。这需要强大的识别设备,以便可以应用适当的网络安全策略。我们通过使用网络边缘可用的资源来探索如何根据其网络行为准确识别IoT设备来应对这一挑战。 在本文中,我们比较了五个不同的机器学习模型(基于树和神经网络)的准确性,以通过使用来自大型物联网测试床的数据包跟踪数据来识别物联网设备,这表明所有模型都需要随时间更新,以避免准确的准确性降低。为了有效地更新模型,我们发现有必要使用从部署环境(例如家庭)收集的数据。因此,我们使用代表网络边缘(例如在IoT部署中)的硬件资源和数据源来评估我们的方法。我们表明,在边缘更新基于神经网络的模型是可行的,因为它们需要低计算和内存资源,并且它们的结构可以更新。我们的结果表明,在边缘的精度分别以超过80%和90%的精度来实现设备识别和分类。

Internet-of-Things (IoT) devices are known to be the source of many security problems, and as such they would greatly benefit from automated management. This requires robustly identifying devices so that appropriate network security policies can be applied. We address this challenge by exploring how to accurately identify IoT devices based on their network behavior, using resources available at the edge of the network. In this paper, we compare the accuracy of five different machine learning models (tree-based and neural network-based) for identifying IoT devices by using packet trace data from a large IoT test-bed, showing that all models need to be updated over time to avoid significant degradation in accuracy. In order to effectively update the models, we find that it is necessary to use data gathered from the deployment environment, e.g., the household. We therefore evaluate our approach using hardware resources and data sources representative of those that would be available at the edge of the network, such as in an IoT deployment. We show that updating neural network-based models at the edge is feasible, as they require low computational and memory resources and their structure is amenable to being updated. Our results show that it is possible to achieve device identification and categorization with over 80% and 90% accuracy respectively at the edge.

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