利用分集度量作为一种新的漂移检测方法提高物联网入侵检测系统的性能

O. A. Mahdi, Ammar Alazab, S. Bevinakoppa, Nawfal Ali, Ansam Khraisat
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引用次数: 0

摘要

物联网(IoT)的出现彻底改变了医疗保健、智能家居、农业、交通和制造业等各个领域。然而,物联网网络的快速增长带来了新的安全挑战,使其容易受到各种攻击。作为回应,机器学习驱动的入侵检测方法已经被开发出来,它分析物联网设备的行为和通信模式,以检测和抵消可疑活动。虽然这些方法在静态环境中表现出高精度和低误报率,但它们在动态、不断变化的环境中的性能稳定性尚未确定。模型漂移,即机器学习模型的预测能力随着时间的推移而下降,是一个关键问题,如果不及时识别和解决,它会严重影响基于机器学习的入侵检测系统。我们的工作提出了一种创新的物联网入侵检测系统,该系统将多样性度量作为漂移检测方法,以解决物联网网络中的模型漂移问题。提出的概念可以通过采用尖端的漂移检测技术检测物联网网络中的未知攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing IoT Intrusion Detection System Performance with the Diversity Measure as a Novel Drift Detection Method
The emergence of the Internet of Things (IoT) has revolutionized various sectors, such as healthcare, intelligent homes, agriculture, transportation, and manufacturing. Nevertheless, the rapid growth of IoT networks has introduced new security challenges, making them susceptible to a variety of attacks. In response, machine learning-driven intrusion detection approaches have been developed, which analyze IoT devices' behavior and communication patterns to detect and counteract suspicious activities. While these approaches exhibit high accuracy and low false alarm rates in static contexts, their performance stability in dynamic, evolving environments is yet to be determined. Model drift, the decline in a machine learning model's predictive capacity over time, is a crucial issue that can considerably affect machine learning-based intrusion detection systems if not identified and addressed promptly. Our work presents an innovative IoT Intrusion Detection System that incorporates the Diversity measure as a drift detection method to address model drift in IoT networks. The proposed concept can detect unknown attacks in IoT networks by employing a cutting-edge drift detection technique.
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