Download PDFOpen PDF in browserFortifying IoT Security: Harnessing Machine Learning for Enhanced Intrusion Detection in Interconnected NetworksEasyChair Preprint 1237311 pages•Date: March 4, 2024AbstractAs the Internet of Things (IoT) continues to proliferate, ensuring robust security measures becomes paramount. This paper explores the integration of machine learning strategies for enhancing intrusion detection in interconnected networks. By leveraging advanced algorithms, anomaly detection, and behavioral analysis, the proposed approach aims to fortify IoT security and mitigate emerging threats. The study evaluates the effectiveness of these machine learning techniques in identifying and responding to unauthorized access, malicious activities, and potential vulnerabilities within connected ecosystems. Keyphrases: Connected Networks, Cybersecurity, Intrusion Detection, IoT Security, Threat Mitigation, Vulnerability, anomaly detection, behavioral analysis, machine learning, unauthorized access
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