Understanding Towards Robust Android Malware Detection Models Using Adversarial Learning

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  • Authors: Heng Li, Shiyao Zhou, Wei Yuan, Xiapu Luo, Cuiying Gao, Shuiyan Chen.
  • ElMouatez Billah Karbab discusses his work at DFRWS EU 2018.
  • This study presents a novel
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  • UCL Information Security Research Seminar on 12.05.22 Abstract: A growing number of

Detailed Analysis of Towards Robust Android Malware Detection Models Using Adversarial Learning

The last decade witnessed an exponential growth of smartphones and their users, which has drawn massive attention from ... K. S. Wagh, Improving Adversarial

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