Download PDFOpen PDF in browserEnhancing IoT Security: Utilizing Machine Learning for Advanced Intrusion Detection in Connected NetworksEasyChair Preprint 1280710 pages•Date: March 28, 2024AbstractWith the rapid proliferation of Internet of Things (IoT) devices, ensuring robust security measures within connected networks has become imperative. Traditional security approaches are often insufficient to combat the evolving threats in IoT environments. This paper proposes leveraging machine learning techniques for enhanced intrusion detection in IoT networks. By harnessing the power of machine learning algorithms, such as deep learning and anomaly detection, we aim to detect and mitigate potential intrusions effectively. This research explores various aspects of implementing machine learning-based intrusion detection systems tailored to IoT environments, including data preprocessing, feature selection, model training, and real-time monitoring. Through experimentation and analysis, we demonstrate the efficacy of our proposed approach in detecting both known and unknown threats, thereby strengthening the overall security posture of IoT networks Keyphrases: Connected Networks, Intrusion Detection, IoT Security, anomaly detection, data preprocessing, deep, detection, feature selection, learning, machine learning, real-time monitoring, threat
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