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ARdetector: android ransomware detection framework

Authors
Li, DanShi, WenboLu, NingLee, Sang-SuLee, Sokjoon
Issue Date
Apr-2024
Publisher
SPRINGER
Keywords
Android mobile; Convolutional neural networks (CNN); Focal loss; Imbalanced; Ransomware
Citation
JOURNAL OF SUPERCOMPUTING, v.80, no.6, pp 7557 - 7584
Pages
28
Journal Title
JOURNAL OF SUPERCOMPUTING
Volume
80
Number
6
Start Page
7557
End Page
7584
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/90894
DOI
10.1007/s11227-023-05741-y
ISSN
0920-8542
1573-0484
Abstract
Ransomware has affected a broad range of public and private-sector organizations, and the impacts include direct and indirect financial loss (e.g., opportunity costs), reputational damage, legal implications, and physical consequences (e.g., fatalities). However, it has been challenging to accurately detect ransomware. For example, ransomware's behavioral characteristics differ from many other malicious applications, and it can be laborious to obtain representative features that can be used for machine learning training. In addition, the issue of the imbalanced dataset of minority and majority classes complicates efforts for machine learning models to learn the internal patterns of minority classes. In an effort for tackling such difficulties, we suggest an architecture regarding Android ransomware detection (hereafter referred to as ARdetector), which allows one to analyze the relationship between behav oral characteristics and other candidate features associated with ransomware to select more representative features. In addition, we design a deep neural network based on focal loss, which lowers the loss generated by the majority class. In our evaluations, we use two real-world datasets of different class proportions, and the findings show that the accuracy of the ARdetector on both datasets is over 99.00% when the imbalanced ratio is 6. Specifically, via the BMR dataset, the AUC as a synthetical categorizing assessment indicator reaches as high as 0.9625 at that ratio of 15.
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Lee, Sokjoon
College of IT Convergence (컴퓨터공학부(스마트보안전공))
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