2024
DOI: 10.1142/s0218194024500086
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Improving Windows Malware Detection Using the Random Forest Algorithm and Multi-View Analysis

S. Syed Suhaila,
K. Sundara Krishnan

Abstract: Cybercriminals motivated by malign purpose and financial gain are rapidly developing new variants of sophisticated malware using automated tools, and most of these malware target Windows operating systems. This serious threat demands efficient techniques to analyze and detect zero-day, polymorphic and metamorphic malware. This paper introduces two frameworks for Windows malware detection using random forest algorithms. The first scheme uses features obtained from static and dynamic analysis for training, and t… Show more

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