2024
DOI: 10.1007/s11416-024-00516-2
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Creating valid adversarial examples of malware

Matouš Kozák,
Martin Jureček,
Mark Stamp
et al.

Abstract: Because of its world-class results, machine learning (ML) is becoming increasingly popular as a go-to solution for many tasks. As a result, antivirus developers are incorporating ML models into their toolchains. While these models improve malware detection capabilities, they also carry the disadvantage of being susceptible to adversarial attacks. Although this vulnerability has been demonstrated for many models in white-box settings, a black-box scenario is more applicable in practice for the domain of malware… Show more

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