Unsupervised Ensemble Based Deep Learning Approach for Attack Detection
in IoT Network
- URL: http://arxiv.org/abs/2207.07903v1
- Date: Sat, 16 Jul 2022 11:12:32 GMT
- Title: Unsupervised Ensemble Based Deep Learning Approach for Attack Detection
in IoT Network
- Authors: Mir Shahnawaz Ahmed and Shahid Mehraj Shah
- Abstract summary: Internet of Things (IoT) has altered living by controlling devices/things over the Internet.
To bring down the IoT network, attackers can utilise these devices to conduct a variety of network attacks.
In this paper, we have developed an unsupervised ensemble learning model that is able to detect new or unknown attacks in an IoT network from an unlabelled dataset.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The Internet of Things (IoT) has altered living by controlling devices/things
over the Internet. IoT has specified many smart solutions for daily problems,
transforming cyber-physical systems (CPS) and other classical fields into smart
regions. Most of the edge devices that make up the Internet of Things have very
minimal processing power. To bring down the IoT network, attackers can utilise
these devices to conduct a variety of network attacks. In addition, as more and
more IoT devices are added, the potential for new and unknown threats grows
exponentially. For this reason, an intelligent security framework for IoT
networks must be developed that can identify such threats. In this paper, we
have developed an unsupervised ensemble learning model that is able to detect
new or unknown attacks in an IoT network from an unlabelled dataset. The
system-generated labelled dataset is used to train a deep learning model to
detect IoT network attacks. Additionally, the research presents a feature
selection mechanism for identifying the most relevant aspects in the dataset
for detecting attacks. The study shows that the suggested model is able to
identify the unlabelled IoT network datasets and DBN (Deep Belief Network)
outperform the other models with a detection accuracy of 97.5% and a false
alarm rate of 2.3% when trained using labelled dataset supplied by the proposed
approach.
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