INNOVATION IN CYBER THREAT DETECTION: TRANSFORMER-BASED APPROACH
Journal: International Journal of Advanced Research (Vol.12, No. 11)Publication Date: 2024-11-20
Authors : Dje Bi Dje Guy Gabin Diako Doffou Jerome Kanga Koffi; Oumtanaga Souleymane;
Page : 1375-1389
Keywords : Artificial Intelligence Cyber-Security Malware Transformer;
Abstract
Malware poses a major threat to cyber security. In fact, its increasing sophistication and rapid spread over the internet poses increasingly complex challenges. Modern malware uses advanced evasion strategies, often rendering traditional detection systems ineffective, especially against zero-day attacks. These challenges are amplified by complex obfuscation techniques, as well as the diversity of malicious behaviors, fueled by the daily creation of new malware. In the face of these threats, our study proposes an innovative approach using BERT and GPT-2 to improve malware detection. The main innovation of our method lies in the application of Transformers to analyze and identify complex behavioral signatures of malware, which improves the detection capability, particularly in terms of accuracy and generalization to new threats. The evaluation of our model on the CICMalDroid2020 dataset, as well as the comparison of the results obtained with similar works, demonstrate that BERT and GPT-2 offer significant advantages in terms of accuracy, robustness and generalization capacity against modern threats.
Other Latest Articles
- EVALUATION OF SALIVARY URIC ACID LEVELS AS A NOVEL BIOMARKER IN THE ASSESSMENT OF ORAL HEALTH STATUS AMONG WOMEN AT DIFFERENT STAGES OF THEIR LIFE CYCLE
- ROLE OF TITANIUM IN PROSTHODONTICS
- STRATEGIC MANAGEMENT OF START-UP UNIVERSITIES: A CASE STUDY OF UNIVERSITAS PROF. DR. DR. DR. M HAFIZURRACHMAN, SH, MPH (UHAFIZ) IN TRANSFORMING HIGHER EDUCATION IN CIANJUR, WEST JAVA, INDONESIA
- MICROBIOLOGICAL PROFILE OF CLINICALLY DIAGNOSED VAGINOSIS IN TERTIARY CARE HOSPITAL
- Philosophy of economics: the analysis of alternative directions
Last modified: 2025-01-29 15:29:34