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BERT ensemble based MBR framework for android malware detection.

Faisal S Alsubaei1, Abdulwahab Ali Almazroi2, Walid Said Atwa2,3

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This study introduces a novel BERT Ensemble (MBR) framework for Android malware detection in IoT devices. The MBR model achieves high accuracy, offering a reliable solution for enhanced system security and user privacy.

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Area of Science:

  • Cybersecurity
  • Machine Learning
  • Internet of Things (IoT)

Background:

  • Android malware poses significant risks to IoT devices.
  • Existing methods for Android malware detection face challenges in complex IoT environments.

Purpose of the Study:

  • To develop a novel framework for Android malware detection (AMD) in recommender systems-based IoT.
  • To enhance system security and user privacy against evolving Android malware threats.

Main Methods:

  • A BERT Ensemble (MBR) model combined with MobileNetV2 was developed.
  • A threat analysis technique using a subset of 100 Android app permissions and a refined feature set was employed.
  • Ensemble methods were applied to static data for malware detection.

Main Results:

  • The MBR model achieved 98% accuracy, 96% precision, 98% recall, and 97% F1-score.
  • The framework demonstrated superior performance compared to MCADS, DroidRL, CNN, FAGnet, GAN, and FEDriod.
  • A low log loss of 0.058 was recorded, indicating high model reliability.

Conclusions:

  • The MBR framework offers a reliable and innovative solution for Android malware detection in IoT.
  • The study addresses critical user privacy and system security concerns in the face of increasing Android malware risks.
  • This research presents a novel strategy for malware detection using ensemble methods on static data.