物联网系统中的入侵检测:使用 Naive Bayes 分类器的特征提取方法

Juan Carlos Juarez Vargas, Hayder M. A. Ghanimi, Sivaprakash S, Amarendra K, Rajendiran M, Sheylla L Cotrado Lupo
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引用次数: 0

摘要

物联网(IoT)的发展如雨后春笋般涌现,从普通的家庭自动化过渡到涵盖医疗保健、农业、交通和制造业等领域。这种演变的特点是设备能够自主收集、传播和分析数据,从而改善实时决策、预测洞察力和定制化用户体验。物联网无处不在,虽然前景广阔,但也带来了重大的数据安全问题。大量相互连接的设备和多种多样且往往不足的安全功能,使它们很容易受到网络威胁,这就强调了对强大安全机制的需求。入侵检测系统(IDS)历来是防范此类威胁的重要手段;然而,随着物联网数据的不断增加,传统的 IDS 模型(如 Naive Bayes)面临着处理速度和准确性方面的挑战。本文介绍了一种新型模型 "FE+NB",它将先进的特征提取(FE)与奈夫贝叶斯(NB)分类器相结合。该模型的核心是为物联网交通数据量身定制的 "时序-结构合成 "技术,侧重于数据压缩、时序和结构分析以及使用互信息的特征选择(FS)。因此,该模型提高了复杂物联网网络入侵检测(ID)的效率和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intrusion Detection in Internet of Things Systems: A Feature Extraction with Naive Bayes Classifier Approach
The Internet of Things (IoT) has proliferated, transitioning from modest home automation to encompass sectors like healthcare, agriculture, transportation, and manufacturing. This evolution is characterized by devices' ability to autonomously gather, disseminate, and analyze data, leading to improved real-time decision-making, predictive insights, and customized user experiences. The ubiquity of IoT, while promising, introduces significant data security concerns. The vast number of interlinked devices and diverse and often insufficient security features make them vulnerable to cyber threats, emphasizing the need for robust security mechanisms. Intrusion Detection Systems (IDS) have traditionally acted as vital guards against such threats; however, with the ever-increasing data in the IoT, traditional IDS models, such as Naive Bayes, face processing speed and accuracy challenges. This paper introduces a novel model, "FE+NB," which merges advanced Feature Extraction (FE) with the Naive Bayes (NB) classifier. Central to this model is the "Temporal-Structural Synthesis" technique tailored for IoT traffic data, focusing on data compression, temporal and structural analyses, and Feature Selection (FS) using mutual information. Consequently, the model enhances efficiency and accuracy in Intrusion Detection (ID) in complex IoT networks.
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