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Machine-Learning based analysis and classification of Android malware signatures

机译:基于机器学习的Android恶意软件签名分析和分类

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摘要

Multi-scanner Antivirus (AV) systems are often used for detecting Android malware since the same piece of software can be checked against multiple different AV engines. However, in many cases the same software application is flagged as malware by few AV engines, and often the signatures provided contradict each other, showing a clear lack of consensus between different AV engines. This work analyzes more than 80 thousand Android applications flagged as malware by at least one AV engine, with a total of almost 260 thousand malware signatures. In the analysis, we identify 41 different malware families, we study their relationships and the relationships between the AV engines involved in such detections, showing that most malware cases belong to either Adware abuse or really dangerous Harmful applications, but some others are unspecified (or Unknown). With the help of Machine Learning and Graph Community Algorithms, we can further combine the different AV detections to classify such Unknown apps into either Adware or Harmful risks, reaching F1-score above 0.84. (C) 2019 Elsevier B.V. All rights reserved.
机译:多扫描仪防病毒(AV)系统通常用于检测Android恶意软件,因为可以针对多个不同的AV引擎检查同一软件。但是,在许多情况下,很少的AV引擎将同一软件应用程序标记为恶意软件,并且通常所提供的签名相互矛盾,这表明不同的AV引擎之间显然缺乏共识。这项工作分析了至少一个AV引擎将8万多个Android应用程序标记为恶意软件,总共有近26万个恶意软件签名。在分析中,我们确定了41个不同的恶意软件家族,我们研究了它们之间的关系以及此类检测所涉及的AV引擎之间的关系,表明大多数恶意软件案例属于Adware滥用或真正危险的有害应用程序,但其他一些未指定(或未知)。借助机器学习和图社区算法,我们可以进一步组合不同的AV检测,以将此类未知应用分类为Adware或有害风险,达到F1得分高于0.84。 (C)2019 Elsevier B.V.保留所有权利。

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