字节码
恶意软件
计算机科学
Android(操作系统)
移动恶意软件
Android恶意软件
混淆
人工智能
机器学习
深度学习
移动设备
计算机安全
操作系统
虚拟机
作者
Xusheng Xiao,Shao Yang
标识
DOI:10.1109/ase.2019.00155
摘要
Until 2017, Android smartphones occupied approximately 87% of the smartphone market. The vast market also promotes the development of Android malware. Nowadays, the number of malware targeting Android devices found daily is more than 38,000. With the rapid progress of mobile application programming and anti-reverse-engineering techniques, it is harder to detect all kinds of malware. To address challenges in existing detection techniques, such as data obfuscation and limited code coverage, we propose a detection approach that directly learns features of malware from Dalvik bytecode based on deep learning technique (CNN). The average detection time of our model is0.22 seconds, which is much lower than other existing detection approaches. In the meantime, the overall accuracy of our model achieves over 93%.
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