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Android anomaly detection system using machine learning classification

机译:使用机器学习分类的Android异常检测系统

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Android is one of the most popular open-source smartphone operating system and its access control permission mechanisms cannot detect any malware behavior. In this paper, new software behavior-based anomaly detection system is proposed to detect anomaly caused by malware. It works by analyzing anomalies on power consumption, battery temperature and network traffic data using machine learning classification algorithm. The result shows that this method can detect anomaly with 85.6% accuracy.
机译:Android是最流行的开源智能手机操作系统之一,其访问控制权限机制无法检测到任何恶意软件行为。本文提出了一种新的基于软件行为的异常检测系统,以检测由恶意软件引起的异常。它通过使用机器学习分类算法分析功耗,电池温度和网络流量数据的异常来工作。结果表明,该方法能够以85.6%的准确度检测异常。

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