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An Adversarial Machine Learning Model Against Android Malware Evasion Attacks

机译:Android恶意软件逃避攻击的对抗机器学习模型

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With explosive growth of Android malware and due to its damage to smart phone users, the detection of Android malware is one of the cybersecurity topics that are of great interests. To protect legitimate users from the evolving Android malware attacks, systems using machine learning techniques have been successfully deployed and offer unparalleled flexibility in automatic Android malware detection. Unfortunately, as machine learning based classifiers become more widely deployed, the incentive for defeating them increases. In this paper, we explore the security of machine learning in Android malware detection on the basis of a learning-based classifier with the input of Application Programming Interface (API) calls extracted from the smali files. In particular, we consider different levels of the attackers' capability and present a set of corresponding evasion attacks to thoroughly assess the security of the classifier. To effectively counter these evasion attacks, we then propose a robust secure-learning paradigm and show that it can improve system security against a wide class of evasion attacks. The proposed model can also be readily applied to other security tasks, such as anti-spam and fraud detection.
机译:随着Android恶意软件的爆炸性增长,由于其对智能手机用户的损坏,Android恶意软件的检测是具有极大兴趣的网络安全主题之一。为了保护合法用户从不断发展的Android恶意软件攻击,使用机器学习技术的系统已成功地部署,并在自动Android恶意软件检测中提供无与伦比的灵活性。不幸的是,随着基于机器的基于机器的分类机会变得更广泛地部署,击败它们的激励增加了。在本文中,我们在基于学习的分类器的基础上探讨了Android恶意软件检测中的机器学习的安全性,其中包含从Smali文件中提取的应用程序编程接口(API)调用的输入。特别是,我们认为攻击者的能力不同,并呈现一组相应的逃避攻击,以彻底评估分类器的安全性。为了有效地抵消这些逃避攻击,我们提出了一种强大的安全学习范例,并表明它可以改善对广泛逃避攻击的系统安全性。所提出的模型也可以容易地应用于其他安全任务,例如反垃圾邮件和欺诈检测。

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