Abstract
The growing complexity of cyber threats has shifted the focus from merely identifying threats to detecting their origins, resulting in stronger defenses against malware. Traditional detection techniques are often inadequate against increasingly sophisticated malware, prompting this research article to propose a new clustering method—fuzzy C-mean simulated annealing (FCMSA)—to enhance malware detection through machine learning. The FCMSA clustering technique improves performance by minimizing vulnerabilities, reducing outliers, and optimizing large datasets. The proposed technique selects high-quality clusters from Android app permissions and, using lightGBM, classifies Android malware. Experimental results show that the proposed FCMSA-GBM technique achieves superior accuracy (99.21%) and precision (99.70%) compared to other prevalent cluster-based Android malware detection techniques, while also lowering error rates and execution time.
Original language | English |
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Article number | 100560 |
Journal | Egyptian Informatics Journal |
Volume | 28 |
DOIs | |
Publication status | Published - Dec 2024 |
Keywords
- Android malware detection
- Fuzzy c means clustering
- Gradient boosting machine
- Simulated annealing
ASJC Scopus subject areas
- Information Systems
- Computer Science Applications
- Management Science and Operations Research