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Evaluation of Tree Based Machine Learning Classifiers for Android Malware Detection

机译:基于树的Android恶意软件检测的基于树的机器学习分类器的评估

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Android is a most popular mobile-based operating system with billions of active users, which has encouraged hackers and cyber-criminals to push the malware into this operating system. Accordingly, extensive research has been conducted on malware analysis and detection for Android in recent years; and Android has developed and implemented numerous security controls to deal with the problems, including unique ID (UID) for each application, system permissions, and its distribution platform Google Play. In this paper, we evaluate four tree-based machine learning algorithms for detecting Android malware in conjunction with a substring-based feature selection method for the classifiers. In the experiments 11,120 apps of the DREBIN dataset were used where 5,560 contain malware samples and the rest are benign. It is found that the Random Forest classifier outperforms the best previously reported result (around 94% accuracy, obtained by SVM) with 97.24% accuracy, and thus provides a strong basis for building effective tools for Android malware detection.
机译:Android是一个最流行的基于移动操作系统,具有数十亿活跃用户,其中有鼓励黑客和网络罪犯在恶意软件推到这个操作系统。因此,大量的研究已经在最近几年恶意软件分析和检测针对Android进行;而Android已经制定和实施了许多安全控制来处理这些问题,包括独特的ID(UID)为每个应用程序,系统权限,以及其分销平台谷歌播放。在本文中,我们评估了在结合的分类器基于子串的特征选择方法检测恶意软件的Android四个基于树的机器学习算法。在实验中使用的数据集DREBIN 11,120的应用程序,其中包含5,560个恶意软件样本,其余都是良性的。据发现,随机森林分类器的性能优于最好的先前报道的结果(约94%的准确度,通过SVM获得)与97.24%的准确度,因此可提供用于构建有效的工具为Android恶意软件检测一个坚实的基础。

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