[HTML][HTML] Machine learning for android malware detection: mission accomplished? a comprehensive review of open challenges and future perspectives
A Guerra-Manzanares - Computers & Security, 2024 - Elsevier
The extensive research in machine learning based Android malware detection showcases
high-performance metrics through a wide range of proposed solutions. Consequently, this …
high-performance metrics through a wide range of proposed solutions. Consequently, this …
Quality evaluation of true random bit-streams in ransomware payload bytecode
J Feyal, R Matthews - Authorea Preprints, 2024 - techrxiv.org
Ransomware attacks continue to evolve, with increasingly complex cryptographic payloads
designed to evade detection and disrupt systems. A novel approach has been developed to …
designed to evade detection and disrupt systems. A novel approach has been developed to …
[HTML][HTML] Android Malware Detection and Identification Frameworks by Leveraging the Machine and Deep Learning Techniques: A Comprehensive Review
The ever-increasing growth of online services and smart connectivity of devices have posed
the threat of malware to computer system, android-based smart phones, Internet of Things …
the threat of malware to computer system, android-based smart phones, Internet of Things …
Obfuscation-resilient android malware analysis based on complementary features
Existing Android malware detection methods are usually hard to simultaneously resist
various obfuscation techniques. Therefore, bytecode-based code obfuscation becomes an …
various obfuscation techniques. Therefore, bytecode-based code obfuscation becomes an …
Binarized multi-gate mixture of Bayesian experts for cardiac syndrome X diagnosis: A clinician-in-the-loop scenario with a belief-uncertainty fusion paradigm
Abstract Cardiac Syndrome X (CSX) is a very dangerous cardiovascular disease
characterized by angina-like chest discomfort and pain on effort despite normal epicardial …
characterized by angina-like chest discomfort and pain on effort despite normal epicardial …
Detecting Android malware: A multimodal fusion method with fine-grained feature
X Li, L Liu, Y Liu, H Liu - Information Fusion, 2025 - Elsevier
Context: Recently, many studies have been proposed to address the threat posed by
Android malware. However, the continuous evolution of malware poses challenges to the …
Android malware. However, the continuous evolution of malware poses challenges to the …
Machine learning (in) security: A stream of problems
Machine Learning (ML) has been widely applied to cybersecurity and is considered state-of-
the-art for solving many of the open issues in that field. However, it is very difficult to evaluate …
the-art for solving many of the open issues in that field. However, it is very difficult to evaluate …
DOMR: Towards Deep Open-world Malware Recognition
T Lu, J Wang - IEEE Transactions on Information Forensics and …, 2023 - ieeexplore.ieee.org
Deep learning has been widely used for Android malware family recognition, but current
deep learning-based approaches make the closed-world assumption that malware families …
deep learning-based approaches make the closed-world assumption that malware families …
[HTML][HTML] MeMalDet: A memory analysis-based malware detection framework using deep autoencoders and stacked ensemble under temporal evaluations
Malware attacks continue to evolve, making detection challenging for traditional static and
dynamic analysis techniques. On the other hand, memory analysis provides valuable …
dynamic analysis techniques. On the other hand, memory analysis provides valuable …
Android malware detection with classification based on hybrid analysis and N-gram feature extraction
Mobile devices will have the potential to expose to various cyber-attacks with the explosive
growth of mobile networks. Unknown malware may proliferate dramatically in areas where …
growth of mobile networks. Unknown malware may proliferate dramatically in areas where …