基于SMOTE的loT入侵检测系统的有效机器学习方法

V. Surya, M. Selvam
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引用次数: 1

摘要

入侵检测系统是一种复杂的工具,用于检测网络中可能的入侵,并确保机密性、完整性和可用性。loT是一个提高生活水平的宝贵领域,这在现有的传统范式中是无法完成的。入侵检测系统可以有效识别攻击是否正常。因此,分类算法可以用于预测。人工智能技术中的机器学习和深度学习概念对数据科学的贡献更大,在loT应用中产生了显着的发展。在本文中,机器学习(ML)算法用于在处理loTID20数据集时使用入侵检测系统来保护loT设备。该数据集高度不平衡,包含不同类型的攻击和子攻击。过采样技术,即合成少数过采样技术(S MOTE)对数据集的显著平衡影响了结果。loT ID20是一个监督数据集,使用不同的分类算法来衡量性能指标,即准确性,召回率,精度和f分数。使用ML技术对数据集进行二元分类和多元分类。研究发现,使用K-N最近邻、决策树和随机森林技术等机器学习分类器获得的准确率在90%以上,表明对loT网络上发生的攻击的缓解是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Effective Machine Learning Approach for loT Intrusion Detection System based on SMOTE
Intrusion detection system to secure loT is a sophisticated tool to detect possible intrusions in the network and ensures confidentiality, integrity, and availability. loT is a precious domain that improves the standard of life, which cannot be accomplished in the existing conventional paradigm. The intrusion detection system is effective in identifying whether the attack is normal or not. Thus, classification algorithms can be applied for prediction. The Machine Learning and Deep Learning concepts of AI technology which contribute more to Data Science have produced remarkable developments in loT applications. In this paper, Machine Learning (ML) algorithms are used to secure loT devices using intrusion detection systems while working on loTID20 dataset. This dataset is highly imbalanced and contains different types of attacks and sub-attacks. The effect of the oversampling technique, Synthetic Minority Oversampling Technique (S MOTE) to balance the dataset significantly, has influenced the result. loT ID20 is a supervised dataset and different classification algorithms are used to measure the performance metrics namely, Accuracy, Recall, Precision, and F-score. The Binary and Multi classifications are done on the dataset using ML techniques. It is found that the accuracy obtained using the ML classifiers such as K-N earest Neighbor, Decision tree and Random Forest techniques is above 90%, showing that the mitigation of attacks that occur on an loT network is effective.
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