Nesnelerin İnterneti Cihazlarına Karşı Yapılan Makine Öğrenmesi Saldırıları

A. Ergun, Özgü Can
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Abstract

Extended Abstract As the number of Internet of Things (IoT) devices increases day by day, attacks against these devices are also increasing. In this study, methods of ensuring security in IoT devices and attacks on IoT devices are discussed, and the importance of zero-trust architecture in ensuring IoT security is explained. In addition, the defense rates of padding methods against machine learning used by the attacker are shown and the defense methods used with machine learning techniques are explained. For this purpose, machine learning methods that are effective on attacks, attacks and violations that are achieved by machine learning techniques are specified. In addition, the effectiveness of machine learning techniques in classifying IoT devices in encrypted traffic is examined. The effectiveness of Random Forest and Decision Tree classification algorithms in classifying IoT devices are evaluated. Finally, experiments are carried out for commonly used attack and defense methods. For this purpose, the accuracy rates of the padded and unpadded experiments are compared by analyzing the IoT device traffic. When classifying unpadded data, 84% accuracy rate of IoT devices is achieved, while this accuracy rate has been reduced to 19% with the random padding method that aims to reduce the attacker's rate of accessing correct information.
随着物联网(IoT)设备数量的日益增加,针对这些设备的攻击也越来越多。在本研究中,讨论了确保物联网设备安全的方法和对物联网设备的攻击,并解释了零信任架构在确保物联网安全中的重要性。此外,还显示了填充方法对攻击者使用的机器学习的防御率,并解释了机器学习技术使用的防御方法。为此,指定了对通过机器学习技术实现的攻击、攻击和违规有效的机器学习方法。此外,还研究了机器学习技术在加密流量中对物联网设备进行分类的有效性。评估了随机森林和决策树分类算法在物联网设备分类中的有效性。最后,对常用的攻防方法进行了实验。为此,通过分析物联网设备流量,比较填充和未填充实验的准确率。在对未填充的数据进行分类时,物联网设备的准确率达到84%,而随机填充方法的准确率降低到19%,旨在降低攻击者访问正确信息的几率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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