Download PDFOpen PDF in browserDynamic Threat Mitigation: Harnessing Machine Learning for Behavior-Centric Malware DetectionEasyChair Preprint 120368 pages•Date: February 12, 2024AbstractWith the relentless evolution of malware, traditional signature-based detection methods prove insufficient in safeguarding systems against dynamic threats. This paper introduces a novel approach to malware detection, leveraging machine learning for dynamic threat analysis. Our focus is on behavior-centric detection, where the system learns and adapts to the evolving tactics of malicious entities. By analyzing real-time behavior patterns, our model identifies and mitigates threats proactively, providing a robust defense mechanism against the ever-changing landscape of cyber threats. Keyphrases: Behavior-centric, Cybersecurity, Dynamic Threat Analysis, Proactive Defense, Threat Mitigation, machine learning, malware detection
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