Enhanced Android Malware Detection and Family Classification, using Conversation-level Network Traff

Enhanced Android Malware Detection and Family

Classification, using Conversation-level

Network Traffic Features

 Mohammad Abuthawabeh and *Khaled Mahmoud

King Hussein School of Computing Sciences, Princess Sumaya University for Technology, Jordan

*This email address is being protected from spambots. You need JavaScript enabled to view it.

Abstract: Signature-based malware detection algorithms are facing challenges to cope with the massive number of threats in the Android environment. In this paper, conversation-level network traffic features are extracted and used in a supervised-based model. This model was used to enhance the process of Android malware detection, categorization, and family classification. The model employs the ensemble learning technique in order to select the most useful features among the extracted features. A real-world dataset called CICAndMal2017 was used in this paper. The results show that Extra-trees classifier had achieved the highest weighted accuracy percentage among the other classifiers by 87.75%, 79.97%, and 66.71%for malware detection, malware categorization, and malware family classification respectively. A comparison with another study that uses the same dataset was made. This study has achieved a significant enhancement in malware family classification and malware categorization. For malware family classification, the enhancement was 39.71% for precision and 41.09% for recall. The rate of enhancement for the Android malware categorization was 30.2% and 31.14% for precision and recall, respectively.

Keywords: Information Security, Android Malware, Network Traffic Analysis, Conversation-level Features, and Machine Learning.

Received February 19, 2020; accepted June 9, 2020

https://doi.org/10.34028/iajit/17/4A/4
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