作者
Ali Feizollah, Nor Badrul Anuar, Rosli Salleh, Fairuz Amalina
发表日期
2014/8
研讨会论文
2014 International Symposium on Biometrics and Security Technologies (ISBAST)
页码范围
193 - 197
简介
This paper evaluates performance of two clustering algorithms, namely k-means and mini batch k-means, in the Android malware detection. Network traffic generated by the Android applications, normal and malicious, is analyzed for detection purpose. We have used MalGenome data sample for this work to build the dataset. We chose 800 samples out of 1260 Android malware samples. In addition, we collected numerous normal applications from the official Android market. The results show that mini batch k-means algorithm performs better than k-means algorithm in the Android malware detection.
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