2024
DOI: 10.1186/s42400-024-00205-z
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Enhanced detection of obfuscated malware in memory dumps: a machine learning approach for advanced cybersecurity

Md. Alamgir Hossain,
Md. Saiful Islam

Abstract: In the realm of cybersecurity, the detection and analysis of obfuscated malware remain a critical challenge, especially in the context of memory dumps. This research paper presents a novel machine learning-based framework designed to enhance the detection and analytical capabilities against such elusive threats for binary and multi type’s malware. Our approach leverages a comprehensive dataset comprising benign and malicious memory dumps, encompassing a wide array of obfuscated malware types including Spyware,… Show more

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