Detecting Malicious IoT Traffic using Supervised Machine Learning Algorithms
Version: 1,
Uploaded by: Administrator,
Date Uploaded:
25 November 2022
Warning
You are about to be redirected to a website not operated by the Mauritius Research and Innovation Council. Kindly note that we are not responsible for the availability or content of the linked site. Are you sure you want to leave this page?
IoT comprises of devices connected to each other through the internet. Such IoT networks are now becoming easy prey for attackers. The attacks conducted can however be detected through the use of machine learning techniques. In this paper, Random Forest, Logistic Regression, Naive Bayes and Decision Tree machine learning algorithms are investigated in order to detect malicious traffic in an IoT network. The IoT-23 dataset is used. Best results were obtained using Decision tree