基于混合分类和聚类算法的Android恶意软件检测

jiezhong xiao, Qian Han, Yumeng Gao
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引用次数: 2

摘要

随着过去十年智能手机的爆炸式普及,移动恶意软件似乎是不可避免的。由于Android是一个开放平台,在移动智能设备行业中迅速主导了其他竞争平台(如iOS), Android恶意软件的传播范围要广得多。最近的Android恶意软件开发人员在构建恶意应用程序时具有更高级的功能,这使得应用程序本身更难以使用传统方法检测到。在本文中,我们提出了一种混合机器学习分类和聚类算法来检测最近的Android恶意软件。该算法的f1分数和召回率均为0.9944,优于现有算法。更重要的是,我们的算法返回的top feature清晰地解释了检测任务中的重要因素。它们不仅可以用于增强Android恶意软件检测,还可以通过更多可解释的结果更快地进行白盒分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Classification and Clustering Algorithm on Recent Android Malware Detection
With the explosion in the popularity of smartphones over the previous decade, mobile malware appears to be unavoidable. Because Android is an open platform that is fast dominating other rival platforms (e.g. iOS) in the mobile smart device industry, Android malware has been much more widespread. Recent Android malware developers have more advanced capabilities when building their malicious apps, which make the apps themselves much more difficult to detect using conventional methods. In our paper, we proposed a hybrid machine learning classification and clustering algorithm to detect recent Android malware. The proposed algorithm performs better than the state-of-art algorithms with both F1-score and recall of 0.9944. More importantly, the top features returned by our algorithm clearly explain the important factors in the detection task. They can not only be used for enhanced Android malware detection but also quicker white-box analysis by means of more interpretable results.
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