基于极端梯度提升的分类和回归树,用于物联网网络入侵检测

Silpa Chalichalamala, Niranjana Govindan, Ramani Kasarapu
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引用次数: 0

摘要

如今,现代技术包括物联网(IoT)中的各种设备、网络和应用程序,对社会、经济和工业产生了积极和消极的影响。为了解决这些问题,物联网应用和网络需要轻量级、快速和适应性强的安全解决方案。从这个意义上说,基于人工智能和大数据分析的解决方案可以在网络安全领域产生积极的成果。本研究提出了一种基于极端梯度提升(XGBoost)分类和回归树的方法,用于识别物联网中的网络入侵。由于其分布式结构和内置的更高泛化能力,该模型非常适合应用于资源有限的物联网网络。该方法使用僵尸网络物联网(BoT-IoT)新一代物联网安全数据集进行了全面测试。所有试验都是在一系列不同的环境中进行的,并使用了一系列性能指标来评估所建议方法的有效性。建议的研究结果为涉及二元类和众多类的情况提供了建议和见解。建议的 XGBoost 模型在二元类和多类分类中的攻击检测准确率和精确率分别达到了 99.53% 和 99.51%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An extreme gradient boost based classification and regression tree for network intrusion detection in IoT
Nowadays, modern technology includes various devices, networks, and apps from the internet of things (IoT), which consist of both positive and negative impacts on social, economic, and industrial effects. To address these issues, IoT applications and networks require lightweight, quick, and adaptable security solutions. In this sense, solutions based on artificial intelligence and big data analytics can yield positive outcomes in the realm of cyber security. This study presents a method called extreme gradient boost (XGBoost) based classification and regression tree to identify network intrusions in the IoT. This model is ideally suited for application in IoT networks with restricted resource availability because of its distributed structure and builtin higher generalization capabilities. This approach is thoroughly tested using botnet internet of things (BoT-IoT) new-generation IoT security datasets. All trials are conducted in a range of different settings, and a number of performance indicators are used to evaluate the effectiveness of the proposed method. The suggested study's findings provide recommendations and insights for situations involving binary classes and numerous classes. The suggested XGBoost model achieved 99.53% of accuracy in attack detection and 99.51% in precision for binary class and multiclass classifications, respectively.
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