AI RESEARCH
A Hybrid Approach For Malware Classification Using Secondary Features Fusion
arXiv CS.LG
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ArXi:2606.03432v1 Announce Type: cross The number of malware (either variant or novel) is rapidly increasing, making malware detection and mitigation a complex problem. One approach to improving malware mitigation is automatic detection and malware family classification. However, traditional malware detection methods cannot classify detected malware into their respective families, hindering effective malware mitigation. Consequently, this paper proposes a method to automate malware detection and classification of the detected malware into respective malware families.