中文版 | English
Title

Deep Learning for Android Malware Defenses: a Systematic Literature Review

Author
Publication Years
2022
DOI
Source Title
ISSN
0360-0300
EISSN
1557-7341
Volume55Issue:8Pages:1-36
Abstract
Malicious applications (particularly those targeting the Android platform) pose a serious threat to developers and end-users. Numerous research efforts have been devoted to developing effective approaches to defend against Android malware. However, given the explosive growth of Android malware and the continuous advancement of malicious evasion technologies like obfuscation and reflection, Android malware defense approaches based on manual rules or traditional machine learning may not be effective. In recent years, a dominant research field called deep learning (DL), which provides a powerful feature abstraction ability, has demonstrated a compelling and promising performance in a variety of areas, like natural language processing and computer vision. To this end, employing DL techniques to thwart Android malware attacks has recently garnered considerable research attention. Yet, no systematic literature review focusing on DL approaches for Android malware defenses exists. In this article, we conducted a systematic literature review to search and analyze how DL approaches have been applied in the context of malware defenses in the Android environment. As a result, a total of 132 studies covering the period 2014-2021 were identified. Our investigation reveals that, while the majority of these sources mainly consider DL-based Android malware detection, 53 primary studies (40.1%) design defense approaches based on other scenarios. This review also discusses research trends, research focuses, challenges, and future research directions in DL-based Android malware defenses.
Keywords
URL[Source Record]
Indexed By
Language
English
SUSTech Authorship
Others
WOS Research Area
Computer Science
WOS Subject
Computer Science, Theory & Methods
WOS Accession No
WOS:000905475300001
Publisher
ESI Research Field
COMPUTER SCIENCE
Data Source
人工提交
Citation statistics
Cited Times [WOS]:5
Document TypeJournal Article
Identifierhttp://kc.sustech.edu.cn/handle/2SGJ60CL/411680
DepartmentSouthern University of Science and Technology
工学院_计算机科学与工程系
Affiliation
1.Monash University
2.Southern University of Science and Technology
Recommended Citation
GB/T 7714
Yue Liu,Chakkrit Tantithamthavorn,Li Li,et al. Deep Learning for Android Malware Defenses: a Systematic Literature Review[J]. ACM Computing Surveys,2022,55(8):1-36.
APA
Yue Liu,Chakkrit Tantithamthavorn,Li Li,&Yepang Liu.(2022).Deep Learning for Android Malware Defenses: a Systematic Literature Review.ACM Computing Surveys,55(8),1-36.
MLA
Yue Liu,et al."Deep Learning for Android Malware Defenses: a Systematic Literature Review".ACM Computing Surveys 55.8(2022):1-36.
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