ANDROIDGYNY: Reviewing Clustering Techniques for Android Malware Family Classification


연구 분야: Safety



학회: Digital Threats: Research and Practice, Volume 5, Issue 1


초록

Thousands of malicious applications (apps) are created daily, modified with the aid of automation tools, and released on the World Wide Web. Several techniques have been applied over the years to identify whether an APK is malicious or not. The use of these techniques intends to identify unknown malware mainly by calculating the similarity of a sample with previously grouped, already known families of malicious apps. Thus, high rates of accuracy would enable several countermeasures: from further quick detection to the development of vaccines and aid for reverse engineering new variants. However, most of the literature consists of limited experiments—either short-term and offline or based exclusively on well-known malicious apps’ families. In this paper, we explore the use of malware phylogeny, a term borrowed from biology, consisting of the genealogical study of the relationship between elements and families. Also, we investigate the literature on clustering techniques applied to mobile malware classification and discuss how researchers have been setting up their experiments.


Author Profile
Thalita Scharr Pimenta

Federal Institute of Parana Parana Brazil

Brazil
Author Profile
Fabrício J Ceschin

Federal University of Parana Parana Brazil

Brazil
Author Profile
André Ricardo Abed Grégio

Federal University of Parana Parana Brazil

Brazil

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발행 연도 2024년
인용수 3
출판 국가 Brazil
사이트 ACM
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