With the celebrated success of deep learning, some attempts to develop effective methods for detecting malicious PowerShell programs employ neural nets in a traditional natural …
W Song, X Li, S Afroz, D Garg, D Kuznetsov… - arXiv preprint arXiv …, 2020 - arxiv.org
Modern commercial antivirus systems increasingly rely on machine learning to keep up with the rampant inflation of new malware. However, it is well-known that machine learning …
We present a black-box adversarial attack algorithm which sets new state-of-the-art model evasion rates for query efficiency in the $\ell_\infty $ and $\ell_2 $ metrics, where only loss …
Deep Learning algorithms are effectively working for detection and classification in real-time systems. It surpasses human-level accuracy in image detection, disease classification, and …
For a long time, malware classification and analysis have been an arms-race between antivirus systems and malware authors. Though static analysis is vulnerable to evasion …
Modern commercial antivirus systems increasingly rely on machine learning to keep up with the rampant inflation of new malware. However, it is well-known that machine learning …
We propose MALIGN, a novel malware family detection approach inspired by genome sequence alignment. MALIGN encodes malware using four nucleotides and then uses …
A central challenge of malware detection using machine learning methods is the presence of adversarial variants, small changes to detectable malware that allow it to evade a model …