Malware Detection in Android Systems with Traditional Machine Learning Models: A Survey
Citation
BAYAZIT, Esra Çalık, Özgür Koray ŞAHİNGÖZ & Buket DOĞAN. "Malware Detection in Android Systems with Traditional Machine Learning Models: A Survey". International Congress on Human-Computer Interaction, Optimization and Robotic Applications (HORA), 2020.Abstract
Due to the increased number of mobile devices,
they are integrated in every dimension of our daily life. To
execute some sophisticated programs, a capable operating must
be set up on them. Undoubtedly, Android is the most popular
mobile operating system in the world. IT is extensively used both
in smartphones and tablets with an open source manner which is
distributed with Apache License. Therefore, many mobile
application developers focused on these devices and implement
their products. In recent years, the popularity of Android devices
makes it a desirable target for malicious attackers. Especially
sophisticated attackers focused on the implementation of
Android malware which can acquire and/or utilize some personal
and sensitive data without user consent. It is therefore essential
to devise effective techniques to analyze and detect these threats.
In this work, we aimed to analyze the algorithms which are used
in malware detection and making a comparative analysis of the
literature. With this study, it is intended to produce a
comprehensive survey resource for the researchers, which aim to
work on malware detection.