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Empirical Analysis of Forest Penalizing Attribute and Its Enhanced Variations for Android Malware Detection

Abstrakt

As a result of the rapid advancement of mobile and internet technology, a plethora of new mobile security risks has recently emerged. Many techniques have been developed to address the risks associated with Android malware. The most extensively used method for identifying Android malware is signature-based detection. The drawback of this method, however, is that it is unable to detect unknown malware. As a consequence of this problem, machine learning (ML) methods for detecting and classifying malware applications were developed. The goal of conventional ML approaches is to improve classification accuracy. However, owing to imbalanced real-world datasets, the traditional classification algorithms perform poorly in detecting malicious apps. As a result, in this study, we developed a meta-learning approach based on the forest penalizing attribute (FPA) classification algorithm for detecting malware applications. In other words, with this research, we investigated how to improve Android malware detection by applying empirical analysis of FPA and its enhanced variants (Cas_FPA and RoF_FPA). The proposed FPA and its enhanced variants were tested using the Malgenome and Drebin Android malware datasets, which contain features gathered from both static and dynamic Android malware analysis. Furthermore, the findings obtained using the proposed technique were compared with baseline classifiers and existing malware detection methods to validate their effectiveness in detecting malware application families. Based on the findings, FPA outperforms the baseline classifiers and existing ML-based Android malware detection models in dealing with the unbalanced family categorization of Android malware apps, with an accuracy of 98.94% and an area under curve (AUC) value of 0.999. Hence, further development and deployment of FPA-based meta-learners for Android malware detection and other cybersecurity threats is recommended.

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Autorzy (10)

  • Zdjęcie użytkownika  Abimbola G. Akintola

    Abimbola G. Akintola

    • Department of Computer Science, University of Ilorin, Ilorin 1515, Nigeria
  • Zdjęcie użytkownika  Abdullateef O. Balogun

    Abdullateef O. Balogun

    • Department of Computer Science, University of Ilorin, Ilorin 1515, Nigeria
  • Zdjęcie użytkownika  Luiz Fernando Capretz

    Luiz Fernando Capretz

    • Department of Electrical and Computer Engineering, Western University, London, ON N6A 5B9, Canada
  • Zdjęcie użytkownika  Shuib Basri

    Shuib Basri

    • Department of Computer and Information Science, Universiti Teknologi PETRONAS, Bandar Seri Iskandar 32610, Perak, Malaysia
  • Zdjęcie użytkownika  Shakirat A. Salihu

    Shakirat A. Salihu

    • Department of Computer Science, University of Ilorin, Ilorin 1515, Nigeria
  • Zdjęcie użytkownika  Fatima E. Usman-Hamza

    Fatima E. Usman-Hamza

    • Department of Computer Science, University of Ilorin, Ilorin 1515, Nigeria
  • Zdjęcie użytkownika  Peter O. Sadiku

    Peter O. Sadiku

    • Department of Computer Science, University of Ilorin, Ilorin 1515, Nigeria
  • Zdjęcie użytkownika  Ghaniyyat B. Balogun

    Ghaniyyat B. Balogun

    • Department of Computer Science, University of Ilorin, Ilorin 1515, Nigeria
  • Zdjęcie użytkownika  Zubair O. Alanamu

    Zubair O. Alanamu

    • Department of Computer Science, University of Ilorin, Ilorin 1515, Nigeria

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Informacje szczegółowe

Kategoria:
Publikacja w czasopiśmie
Typ:
artykuły w czasopismach
Opublikowano w:
Applied Sciences-Basel nr 12,
ISSN: 2076-3417
Język:
angielski
Rok wydania:
2022
Opis bibliograficzny:
Akintola A. G., Balogun A. O., Capretz L. F., Mojeed H., Basri S., Salihu S. A., Usman-Hamza F. E., Sadiku P. O., Balogun G. B., Alanamu Z. O.: Empirical Analysis of Forest Penalizing Attribute and Its Enhanced Variations for Android Malware Detection// Applied Sciences-Basel -Vol. 12,iss. 9 (2022), s.4664-
DOI:
Cyfrowy identyfikator dokumentu elektronicznego (otwiera się w nowej karcie) 10.3390/app12094664
Weryfikacja:
Politechnika Gdańska

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