A review of android malware detection approaches based on machine learning
K Liu, S Xu, G Xu, M Zhang, D Sun, H Liu - IEEE access, 2020 - ieeexplore.ieee.org
Android applications are developing rapidly across the mobile ecosystem, but Android
malware is also emerging in an endless stream. Many researchers have studied the …
malware is also emerging in an endless stream. Many researchers have studied the …
Review of android malware detection based on deep learning
Z Wang, Q Liu, Y Chi - IEEE Access, 2020 - ieeexplore.ieee.org
At present, smartphones running the Android operating system have occupied the leading
market share. However, due to the Android operating system's open-source nature, Android …
market share. However, due to the Android operating system's open-source nature, Android …
Droidcat: Effective android malware detection and categorization via app-level profiling
Most existing Android malware detection and categorization techniques are static
approaches, which suffer from evasion attacks, such as obfuscation. By analyzing program …
approaches, which suffer from evasion attacks, such as obfuscation. By analyzing program …
Machine learning aided Android malware classification
N Milosevic, A Dehghantanha, KKR Choo - Computers & Electrical …, 2017 - Elsevier
The widespread adoption of Android devices and their capability to access significant
private and confidential information have resulted in these devices being targeted by …
private and confidential information have resulted in these devices being targeted by …
Transcend: Detecting concept drift in malware classification models
Building machine learning models of malware behavior is widely accepted as a panacea
towards effective malware classification. A crucial requirement for building sustainable …
towards effective malware classification. A crucial requirement for building sustainable …
A combination method for android malware detection based on control flow graphs and machine learning algorithms
Z Ma, H Ge, Y Liu, M Zhao, J Ma - IEEE access, 2019 - ieeexplore.ieee.org
Android malware severely threaten system and user security in terms of privilege escalation,
remote control, tariff theft, and privacy leakage. Therefore, it is of great importance and …
remote control, tariff theft, and privacy leakage. Therefore, it is of great importance and …
Droidsieve: Fast and accurate classification of obfuscated android malware
With more than two million applications, Android marketplaces require automatic and
scalable methods to efficiently vet apps for the absence of malicious threats. Recent …
scalable methods to efficiently vet apps for the absence of malicious threats. Recent …
{TESSERACT}: Eliminating experimental bias in malware classification across space and time
Is Android malware classification a solved problem? Published F1 scores of up to 0.99
appear to leave very little room for improvement. In this paper, we argue that results are …
appear to leave very little room for improvement. In this paper, we argue that results are …
DTMIC: Deep transfer learning for malware image classification
In the ever-changing cyber threat landscape, evolving malware threats demand a new
technique for their detection. This paper puts forward a strategy for distinguishing malware …
technique for their detection. This paper puts forward a strategy for distinguishing malware …
Automated poisoning attacks and defenses in malware detection systems: An adversarial machine learning approach
The evolution of mobile malware poses a serious threat to smartphone security. Today,
sophisticated attackers can adapt by maximally sabotaging machine-learning classifiers via …
sophisticated attackers can adapt by maximally sabotaging machine-learning classifiers via …