TY - JOUR
T1 - AI-enabled approach for enhancing obfuscated malware detection
T2 - a hybrid ensemble learning with combined feature selection techniques
AU - Hossain, Md Alamgir
AU - Haque, Md Alimul
AU - Ahmad, Sultan
AU - AWAD ABDELJABER, HIKMAT
AU - Eljialy, A. E.M.
AU - Alanazi, Abed
AU - Sonal, Deepa
AU - Chaudhary, Kiran
AU - Nazeer, Jabeen
N1 - Publisher Copyright:
© The Author(s) under exclusive licence to The Society for Reliability Engineering, Quality and Operations Management (SREQOM), India and The Division of Operation and Maintenance, Lulea University of Technology, Sweden 2024.
PY - 2024
Y1 - 2024
N2 - In an era where the relentless evolution of cyber threats necessitates the perpetual advancement of security measures, the detection of obfuscated malware has emerged as a formidable challenge. The clandestine tactics employed by malicious actors demand innovative solutions that transcend conventional approaches. In this context, this research present a groundbreaking research endeavor that redefines the frontiers of obfuscated malware detection using artificial intelligence. In this research, a comprehensive methodology is introduced that combines three pivotal feature selection techniques: correlation analysis, mutual information, and principal component analysis. This hybrid approach not only enhances the discrimination of meaningful features but also ensures the efficiency and effectiveness of the feature subset, thus mitigating the curse of dimensionality. To harness the full potential of these meticulously selected features, an array of ensemble-based machine learning algorithms, including AdaBoost, stacking, random forest, bagging, and voting, is deployed. Amongst these, our findings demonstrate that AdaBoost emerges as the preeminent choice, achieving unprecedented levels of performance. The outcomes underscore the profound impact of our research in the realm of obfuscated malware detection, a paradigm shift that reimagines the very essence of security. In a world where cybersecurity challenges continually escalate, our research represents a pivotal milestone in the unceasing battle to safeguard digital landscapes. It is an exultant testament to the boundless potential of innovative feature selection techniques and the supremacy of AdaBoost within the domain of malware detection.
AB - In an era where the relentless evolution of cyber threats necessitates the perpetual advancement of security measures, the detection of obfuscated malware has emerged as a formidable challenge. The clandestine tactics employed by malicious actors demand innovative solutions that transcend conventional approaches. In this context, this research present a groundbreaking research endeavor that redefines the frontiers of obfuscated malware detection using artificial intelligence. In this research, a comprehensive methodology is introduced that combines three pivotal feature selection techniques: correlation analysis, mutual information, and principal component analysis. This hybrid approach not only enhances the discrimination of meaningful features but also ensures the efficiency and effectiveness of the feature subset, thus mitigating the curse of dimensionality. To harness the full potential of these meticulously selected features, an array of ensemble-based machine learning algorithms, including AdaBoost, stacking, random forest, bagging, and voting, is deployed. Amongst these, our findings demonstrate that AdaBoost emerges as the preeminent choice, achieving unprecedented levels of performance. The outcomes underscore the profound impact of our research in the realm of obfuscated malware detection, a paradigm shift that reimagines the very essence of security. In a world where cybersecurity challenges continually escalate, our research represents a pivotal milestone in the unceasing battle to safeguard digital landscapes. It is an exultant testament to the boundless potential of innovative feature selection techniques and the supremacy of AdaBoost within the domain of malware detection.
KW - Artificial intelligence
KW - Cybersecurity innovation
KW - Ensemble machine learning
KW - Hybrid feature selection
KW - Malware obfuscation techniques
KW - Obfuscated malware detection
KW - Precision malware detection
UR - http://www.scopus.com/inward/record.url?scp=85188903880&partnerID=8YFLogxK
U2 - 10.1007/s13198-024-02294-y
DO - 10.1007/s13198-024-02294-y
M3 - Article
AN - SCOPUS:85188903880
SN - 0975-6809
JO - International Journal of System Assurance Engineering and Management
JF - International Journal of System Assurance Engineering and Management
ER -