Cybersecurity Mechanism for Automatic Detection of IoT Intrusions Using Machine Learning

Cheikhane Seyed, Mbaye Kebe, Mohamed El Moustapha El Arby, El Benany Mohamed Mahmoud, Cheikhne Mohamed Mahmoud Seyidi
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引用次数: 0

Abstract

: This article proposes an ML-based cyber security mechanism to optimize intrusion detection that attacks internet objects (IoT). Our approach consists of bringing together several learning methods namely supervised learning, unsupervised learning and reinforcement learning within the same Canvas. The objective is to choose among them the most optimal for classifying and predicting attacks while minimizing the impact linked to the learning costs of these attacks. In our proposed model, we have used a modular design to facilitate the implementation of the intrusion detection engine. The first Meta-learning module is used to collect metadata related to existing algorithmic parameters and learning methods in ML. As for the second module, it allows the use of a cost-sensitive learning technique so that the model is informed of the cost of intrusion detection scenarios. Therefore, among the ML classification algorithms, we choose the one whose automatic learning of intrusions is the least expensive in terms of its speed and its quality in predicting reality. This will make it possible to control the level of acceptable risk in relation to the typology of cyber-attacks. We then simulated our solution using the Weka tool. This led to questionable results, which can be subject to the evaluation of model performance. These results show that the classification quality rate is 93.66% and the classification consistency rate is 0.882 (close to unit 1). This proves the accuracy and performance of the model.
利用机器学习自动检测物联网入侵的网络安全机制
:本文提出了一种基于 ML 的网络安全机制,以优化攻击互联网对象 (IoT) 的入侵检测。我们的方法包括在同一 Canvas 中汇集几种学习方法,即监督学习、无监督学习和强化学习。我们的目标是在这些方法中选择最适合对攻击进行分类和预测的方法,同时将与这些攻击的学习成本相关的影响降至最低。在我们提出的模型中,我们采用了模块化设计,以方便入侵检测引擎的实施。第一个元学习模块用于收集与现有算法参数和 ML 学习方法相关的元数据。至于第二个模块,它允许使用对成本敏感的学习技术,以便让模型了解入侵检测场景的成本。因此,在 ML 分类算法中,我们选择其自动学习入侵的速度和预测现实的质量成本最低的算法。这样就可以根据网络攻击的类型来控制可接受的风险水平。然后,我们使用 Weka 工具模拟了我们的解决方案。这导致了一些值得商榷的结果,这些结果可以用于模型性能的评估。这些结果表明,分类质量率为 93.66%,分类一致性率为 0.882(接近单位 1)。这证明了模型的准确性和性能。
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来源期刊
Journal of Computer Science
Journal of Computer Science Computer Science-Computer Networks and Communications
CiteScore
1.70
自引率
0.00%
发文量
92
期刊介绍: Journal of Computer Science is aimed to publish research articles on theoretical foundations of information and computation, and of practical techniques for their implementation and application in computer systems. JCS updated twelve times a year and is a peer reviewed journal covers the latest and most compelling research of the time.
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