4.6 Article

A Novel Intrusion Detection Approach Using Machine Learning Ensemble for IoT Environments

期刊

APPLIED SCIENCES-BASEL
卷 11, 期 21, 页码 -

出版社

MDPI
DOI: 10.3390/app112110268

关键词

machine learning; intrusion detection system; network anomaly detection; Internet of Things; gradient boosting machine (GBM)

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The Internet of Things (IoT) has gained significant importance due to its applicability in diverse environments, but the absence of security protocols has attracted cyber-criminals. The authors propose a binary classifier approach using machine learning to prevent malicious actors from accessing the IoT network and effectively combat network threats.
The Internet of Things (IoT) has gained significant importance due to its applicability in diverse environments. Another reason for the influence of the IoT is its use of a flexible and scalable framework. The extensive and diversified use of the IoT in the past few years has attracted cyber-criminals. They exploit the vulnerabilities of the open-source IoT framework due to the absentia of robust and standard security protocols, hence discouraging existing and potential stakeholders. The authors propose a binary classifier approach developed from a machine learning ensemble method to filter and dump malicious traffic to prevent malicious actors from accessing the IoT network and its peripherals. The gradient boosting machine (GBM) ensemble approach is used to train the binary classifier using pre-processed recorded data packets to detect the anomaly and prevent the IoT networks from zero-day attacks. The positive class performance metrics of the model resulted in an accuracy of 98.27%, a precision of 96.40%, and a recall of 95.70%. The simulation results prove the effectiveness of the proposed model against cyber threats, thus making it suitable for critical applications for the IoT.

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