Journal ArticleOpen Access
XGB-RF: A Hybrid Machine Learning Approach for IoT Intrusion Detection
Author Affiliations
Khulna University, Instituto de Tecnologias Interativas
Published InTelecom
Year2022
Citations81
Abstract
In the past few years, Internet of Things (IoT) devices have evolved faster and the use of these devices is exceedingly increasing to make our daily activities easier than ever. However, numerous security flaws persist on IoT devices due to the fact that the majority of them lack the memory and computing resources necessary for adequate security operations. As a result, IoT devices are affected by a variety of attacks. A single attack on network systems or devices can lead to significant damages in data security and privacy. However, machine-learning techniques can be applied to detect IoT attacks. In this paper, a hybrid machine learning scheme called XGB-RF is proposed for detecting intrusion attacks. The proposed hybrid method was applied…
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