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Abstract
With the rapid growth of malware attacks, more antivirus developers consider
deploying machine learning technologies into their productions. Researchers and
developers published various machine learning-based detectors with high
precision on malware detection in recent years. Although numerous machine
learning-based malware detectors are available, they face various machine
learning-targeted attacks, including evasion and adversarial attacks. This
project explores how and why adversarial examples evade malware detectors, then
proposes a randomised chaining method to defend against adversarial malware
statically. This research is crucial for working towards combating the
pertinent malware cybercrime.
External Datasets
1000 malware samples from the MAB-Malware project
2448 malware samples obtained from the University of Adelaide
1182 benign samples from files found in the Windows operating system