2021
DOI: 10.48550/arxiv.2103.05292
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Deep Learning for Android Malware Defenses: a Systematic Literature Review

Yue Liu,
Chakkrit Tantithamthavorn,
Li Li
et al.

Abstract: Malicious applications (especially in the Android platform) are a serious threat to developers and end-users. Many research efforts have hence been devoted to developing effective approaches to defend Android malware. However, with the explosive growth of Android malware and the continuous advancement of malicious evasion technologies like obfuscation and reflection, android malware defenses based on manual rules or traditional machine learning may not be effective due to limited apriori knowledge. In recent y… Show more

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Cited by 6 publications
(7 citation statements)
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References 163 publications
(418 reference statements)
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“…Note that our empirical analyses focus on comparing the phone/TV app pairs from three perspectives (i.e., APK artefact, security and privacy, and user interaction). We disregard the apps whose TV and phone versions use the same apk (i.e., 2,472 identical phone/TV pairs) since prior studies [31,41] have investigated the single phone/TVenabled APK. Thus our study compares the app pairs that have a di erent apk for each version.…”
Section: Resultsmentioning
confidence: 99%
“…Note that our empirical analyses focus on comparing the phone/TV app pairs from three perspectives (i.e., APK artefact, security and privacy, and user interaction). We disregard the apps whose TV and phone versions use the same apk (i.e., 2,472 identical phone/TV pairs) since prior studies [31,41] have investigated the single phone/TVenabled APK. Thus our study compares the app pairs that have a di erent apk for each version.…”
Section: Resultsmentioning
confidence: 99%
“…In [67] the authors carried out a comprehensive literature review of various DL architectures applied in Cybersecurity, including state-ofthe-art studies conducted with explainable AI. Indeed, [68] focuses on Android Malware Defenses and XAI applications in this field; they point out that nine out of ten primary sources are proposed after 2019, indicating that explainable Deep Learning approaches for malware defenses are a current hot research topic. Works analysed in this section are in the last 3 years, i. e. from 2020 to 2022.…”
Section: Xai Surveys In Cybersecuritymentioning
confidence: 99%
“…Figure 1 illustrates the working processes of the literature review summarized based on the guidelines provided by Keele [26] and Brereton et al [15], as well as lessons learned from our recent practices [28,39,49,61]. Keywords Identification.…”
Section: Literature Reviewmentioning
confidence: 99%