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Classifier with Deep Deviation Detection in PoE-IoT Devices

机译:PoE-IoT设备中具有深度偏差检测的分类器

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摘要

With the rapid growth in diversity of PoE-IoT devices and concept of "Edge intelligence", PoE-IoT security and behavior analysis is the major concern. These PoE-IoT devices lack visibility when the entire network infrastructure is taken into account. The IoT devices are prone to have design faults in their security capabilities. The entire network may be put to risk by attacks on vulnerable IoT devices or malware might get introduced into IoT devices even by routine operations such as firmware upgrade. There have been various approaches based on machine learning(ML) to classify PoE-IoT devices based on network traffic characteristics such as Deep Packet Inspection(DPI). In this paper, we propose a novel method for PoE-IoT classification where ML algorithm, Decision Tree is used. In addition to classification, this method provides useful insights to the network deployment, based on the deviations detected. These insights can further be used for shaping policies, troubleshooting and behavior analysis of PoE-IoT devices.
机译:随着PoE-IoT设备多样性的迅速增长和“边缘智能”的概念,PoE-IoT安全性和行为分析成为主要关注点。当考虑整个网络基础架构时,这些PoE-IoT设备缺乏可见性。物联网设备的安全功能容易出现设计缺陷。整个网络可能会受到对易受攻击的IoT设备的攻击的威胁,甚至可能会通过固件升级等常规操作将恶意软件引入IoT设备。已经有多种基于机器学习(ML)的方法来根据网络流量特征(例如,深度数据包检测(DPI))对PoE-IoT设备进行分类。在本文中,我们提出了一种使用ML算法,决策树的PoE-IoT分类新方法。除了分类之外,此方法还可以根据检测到的偏差为网络部署提供有用的见解。这些见解可进一步用于制定PoE-IoT设备的策略,故障排除和行为分析。

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