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Detecting Botnet Attacks in IoT Environments: An Optimized Machine Learning Approach

机译:检测IOT环境中的僵尸网络攻击:优化的机器学习方法

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The increased reliance on the Internet and the corresponding surge in connectivity demand has led to a significant growth in Internet-of-Things (IoT) devices. The continued deployment of IoT devices has in turn led to an increase in network attacks due to the larger number of potential attack surfaces as illustrated by the recent reports that IoT malware attacks increased by 215.7% from 10.3 million in 2017 to 32.7 million in 2018. This illustrates the increased vulnerability and susceptibility of IoT devices and networks. Therefore, there is a need for proper effective and efficient attack detection and mitigation techniques in such environments. Machine learning (ML) has emerged as one potential solution due to the abundance of data generated and available for IoT devices and networks. Hence, they have significant potential to be adopted for intrusion detection for IoT environments. To that end, this paper proposes an optimized ML-based framework consisting of a combination of Bayesian optimization Gaussian Process (BO-GP) algorithm and decision tree (DT) classification model to detect attacks on IoT devices in an effective and efficient manner. The performance of the proposed framework is evaluated using the Bot-IoT-2018 dataset. Experimental results show that the proposed optimized framework has a high detection accuracy, precision, recall, and F-score, highlighting its effectiveness and robustness for the detection of botnet attacks in IoT environments.
机译:增加对互联网的依赖性和连接需求的相应浪涌导致了内容互联网(物联网)设备的显着增长。由于最近报告所示的潜在攻击表面,因此,由于最近的2017年从1030万增加到32.7百万,因此,IOT设备的持续部署导致了由于最近的潜在攻击表面而导致的网络攻击增加。这说明了IOT设备和网络的增加脆弱性和易感性。因此,需要在这种环境中进行适当的有效和有效的攻击检测和缓解技术。由于所生成的数据和可用于IOT设备和网络,因此机器学习(ML)已成为一个潜在的解决方案。因此,它们具有可用于物联网环境的入侵检测潜力。为此,本文提出了一种由贝叶斯优化高斯工艺(BO-GP)算法(BO-GP)算法和决策树(DT)分类模型的组合组成的基于ML的框架,以便以有效且有效的方式检测IOT设备的攻击。使用BOT-IOT-2018数据集进行评估所提出的框架的性能。实验结果表明,所提出的优化框架具有高检测精度,精度,召回和F分,突出了其检测IOT环境中僵尸网络攻击的有效性和稳健性。

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