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[HTML][HTML] A systematic literature review on windows malware detection: Techniques, research issues, and future directions
The aim of this systematic literature review (SLR) is to provide a comprehensive overview of
the current state of Windows malware detection techniques, research issues, and future …
the current state of Windows malware detection techniques, research issues, and future …
[HTML][HTML] API-MalDetect: Automated malware detection framework for windows based on API calls and deep learning techniques
This paper presents API-MalDetect, a new deep learning-based automated framework for
detecting malware attacks in Windows systems. The framework uses an NLP-based encoder …
detecting malware attacks in Windows systems. The framework uses an NLP-based encoder …
[HTML][HTML] A novel machine learning approach for detecting first-time-appeared malware
Conventional malware detection approaches have the overhead of feature extraction, the
requirement of domain experts, and are time-consuming and resource-intensive. Learning …
requirement of domain experts, and are time-consuming and resource-intensive. Learning …
A survey of recent advances in deep learning models for detecting malware in desktop and mobile platforms
Malware is one of the most common and severe cyber threats today. Malware infects
millions of devices and can perform several malicious activities including compromising …
millions of devices and can perform several malicious activities including compromising …
[HTML][HTML] Malware detection using memory analysis data in big data environment
Malware is a significant threat that has grown with the spread of technology. This makes
detecting malware a critical issue. Static and dynamic methods are widely used in the …
detecting malware a critical issue. Static and dynamic methods are widely used in the …
[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 …
Obfuscated malware detection using dilated convolutional network
Nowadays, information security is a critical field of research since information technologies
develop rapidly. Consequently, the possible attacks are also evolving. One of the problems …
develop rapidly. Consequently, the possible attacks are also evolving. One of the problems …
MalSPM: Metamorphic malware behavior analysis and classification using sequential pattern mining
Malware pose a serious threat to the computers of individuals, enterprises and other
organizations. In the Windows operating system (OS), Application Programming Interface …
organizations. In the Windows operating system (OS), Application Programming Interface …
[HTML][HTML] Using 3D-VGG-16 and 3D-Resnet-18 deep learning models and FABEMD techniques in the detection of malware
W Al-Khater, S Al-Madeed - Alexandria Engineering Journal, 2024 - Elsevier
Currently, the detection of malware to prevent cybersecurity breaches is a raising a concern
for millions of people around the globe. Even with the most recent updates, antivirus …
for millions of people around the globe. Even with the most recent updates, antivirus …
Unveiling shadows: A comprehensive framework for insider threat detection based on statistical and sequential analysis
H **ao, Y Zhu, B Zhang, Z Lu, D Du, Y Liu - Computers & Security, 2024 - Elsevier
With the increasing importance of internal information security, detecting insider threats has
become a critical issue to safeguard organizations' information systems. However, most of …
become a critical issue to safeguard organizations' information systems. However, most of …