Impact Factor (2025): 6.9
DOI Prefix: 10.47001/IRJIET
Due to the
open architecture of the Android operating system, there has also been a huge
increase in mobile malware. With the growth in amount, variants, diversity and
sophistication in malware, conventional methods often fail to detect malicious
applications. Signatures based technologies work efficient for known malware
but fail to detect unknown or new malware. In this paper author will appliance
an approach to detect the unfamiliar Android malware using machine learning
techniques. In our approach, we extract permissions (AOSP and third party
permissions) features for getting high accuracy. Then features were selected
along with separate apks (malware and benign files) in training and testing
classifiers. We evaluate our method on AndroZoo dataset (15000 malware and
15000 benign Apks) We use Random forest classifiers for classification of
Android malware and achieved 91.1% accuracy with AOSP and 72.3% accuracy with
Third Party Permission.
Country : India
IRJIET, Volume 8, Issue 3, March 2024 pp. 206-211