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Cyber Threat Intelligence for IoT Using Machine Learning
by
Albarakati, Aiman
, Mishra, Shailendra
, Sharma, Sunil Kumar
in
Algorithms
/ Anomalies
/ Artificial neural networks
/ Bayesian analysis
/ Communications traffic
/ Computer simulation
/ Cyberterrorism
/ Data exchange
/ Data mining
/ Decision trees
/ Denial of service attacks
/ Detectors
/ Intelligence gathering
/ Internet of Things
/ Learning algorithms
/ Machine learning
/ Middleware
/ Multilayer perceptrons
/ Neural networks
/ Object recognition
/ Privacy
/ Queueing
/ Sensors
/ Support vector machines
/ Telemetry
/ Threat evaluation
/ Virtual networks
2022
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Cyber Threat Intelligence for IoT Using Machine Learning
by
Albarakati, Aiman
, Mishra, Shailendra
, Sharma, Sunil Kumar
in
Algorithms
/ Anomalies
/ Artificial neural networks
/ Bayesian analysis
/ Communications traffic
/ Computer simulation
/ Cyberterrorism
/ Data exchange
/ Data mining
/ Decision trees
/ Denial of service attacks
/ Detectors
/ Intelligence gathering
/ Internet of Things
/ Learning algorithms
/ Machine learning
/ Middleware
/ Multilayer perceptrons
/ Neural networks
/ Object recognition
/ Privacy
/ Queueing
/ Sensors
/ Support vector machines
/ Telemetry
/ Threat evaluation
/ Virtual networks
2022
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Do you wish to request the book?
Cyber Threat Intelligence for IoT Using Machine Learning
by
Albarakati, Aiman
, Mishra, Shailendra
, Sharma, Sunil Kumar
in
Algorithms
/ Anomalies
/ Artificial neural networks
/ Bayesian analysis
/ Communications traffic
/ Computer simulation
/ Cyberterrorism
/ Data exchange
/ Data mining
/ Decision trees
/ Denial of service attacks
/ Detectors
/ Intelligence gathering
/ Internet of Things
/ Learning algorithms
/ Machine learning
/ Middleware
/ Multilayer perceptrons
/ Neural networks
/ Object recognition
/ Privacy
/ Queueing
/ Sensors
/ Support vector machines
/ Telemetry
/ Threat evaluation
/ Virtual networks
2022
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Journal Article
Cyber Threat Intelligence for IoT Using Machine Learning
2022
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Overview
The Internet of Things (IoT) is a technological revolution that enables human-to-human and machine-to-machine communication for virtual data exchange. The IoT allows us to identify, locate, and access the various things and objects around us using low-cost sensors. The Internet of Things offers many benefits but also raises many issues, especially in terms of privacy and security. Appropriate solutions must be found to these challenges, and privacy and security are top priorities in the IoT. This study identifies possible attacks on different types of networks as well as their countermeasures. This study provides valuable insights to vulnerability researchers and IoT network protection specialists because it teaches them how to avoid problems in real networks by simulating them and developing proactive solutions. IoT anomalies were detected by simulating message queuing telemetry transport (MQTT) over a virtual network. Utilizing DDoS attacks and some machine learning algorithms such as support vector machine (SVM), random forest (RF), k-nearest neighbors (KNN) and logistic regression (LR), as well as an artificial neural network, multilayer perceptron (MLP), naive Bayes (NB) and decision tree (DT) are used to detect and mitigate the attack. The proposed approach uses a dataset of 4998 records and 34 features with 8 classes of network traffic. The classifier RF showed the best performance with 99.94% accuracy. An intrusion detection system using Snort was implemented. The results provided theoretical proof of applicability and feasibility.
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