DeepMalOb: Deep Detection of Obfuscated Android Malware
Publication Type
Book Chapter
Publication Date (Issue Year)
2023
Journal Name
Pan-African Artificial Intelligence and Smart Systems. PAAISS 2022. Lecture Notes of the Institute for Computer Sciences, Social Informatics and Telecommunications Engineering. Springer, Cham.
Abstract
The detection of malware android became very crucial with the use of obfuscation techniques by developers of malicious applications. In the literature several approaches have been proposed to take into account certain techniques. But it is difficult to take into account all obfuscation techniques because of mutations and this is a critical challenge for cybersecurity. In this contribution, we proposed an approach to detect obfuscated malicious applications. This approach is based on the memory dump process. This process helps to discover the behaviour of obfuscated applications while they are executing without targeting a particular obfuscation technique. We implemented our application using supervised neural networks. We tested and selected hyper-parameters to train our detection model. The different results obtained by the evaluation metrics such as accuracy, precision, recall and F1 score, are excellent with high values around 99%.
Keywords
DeepMalOb, Deep Detection, Obfuscated, Android Malware
Rsif Scholar Name
Zakaria Sawadogo
Thematic Area
ICTs Including Big Data and Artificial Intelligence
Africa Host University (AHU)
University of Gaston Berger (UGB), Senegal
Recommended Citation
Sawadogo, Z., Dembele, J., Tahar, A., Mendy, G., & Ouya, S. (2023). DeepMalOb: Deep Detection of Obfuscated Android Malware. Pan-African Artificial Intelligence and Smart Systems. PAAISS 2022. Lecture Notes of the Institute for Computer Sciences, Social Informatics and Telecommunications Engineering. Springer, Cham., 459 https://doi.org/10.1007/978-3-031-25271-6_19