Title of article :
On the Analysis and Detection of Mobile Botnet Applications
Author/Authors :
Karim, Ahmad university of malaya, Malaysia , Karim, Ahmad Bahauddin Zakariya University, Pakistan , Salleh, Rosli university of malaya, Malaysia , Khan, Muhammad Khurram King Saud University, Saudi Arabia , Siddiqa, Aisha university of malaya, Malaysia , Choo, Kim-Kwang Raymond University of South Australia, Australia
Abstract :
Mobile botnet phenomenon is gaining popularity among malware writers in order to exploit vulnerabilities in smartphones. In particular, mobile botnets enable illegal access to a victim’s smartphone, can compromise critical user data and launch a DDoS attack through Command and Control (C C). In this article, we propose a static analysis approach, DeDroid, to investigate botnet-specific properties that can be used to detect mobile applications with botnet intensions. Initially, we identify critical features by observing code behavior of the few known malware binaries having C C features. Then, we compare the identified features with the malicious and benign applications of Drebin dataset. The results show against the comparative analysis that, Drebin dataset has 35% malicious applications which qualify as botnets. Upon closer examination, 90% of the potential botnets are confirmed as botnets. Similarly, for comparative analysis against benign applications having C C features, DeDroid has achieved adequate detection accuracy. In addition, DeDroid has achieved high accuracy with negligible false positive rate while making decision for state-of-the-art malicious applications.
Keywords :
Mobile Botnet , Botnet Detection , Malware , Botware , Mobile malware detection
Journal title :
Journal of J.UCS (Journal of Universal Computer Science)
Journal title :
Journal of J.UCS (Journal of Universal Computer Science)