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Towards Adversarial Malware Detection: Lessons Learned from PDF-based Attacks

机译:朝向侵犯恶意软件检测:从基于PDF的攻击中汲取的经验教训

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摘要

Malware still constitutes a major threat in the cybersecurity landscape, also due to the widespread use of infection vectors such as documents. These infection vectors hide embedded malicious code to the victim users, facilitating the use of social engineering techniques to infect their machines. Research showed that machine-learning algorithms provide effective detection mechanisms against such threats, but the existence of an arms race in adversarial settings has recently challenged such systems. In this work, we focus on malware embedded in PDF files as a representative case of such an arms race. We start by providing a comprehensive taxonomy of the different approaches used to generate PDF malware and of the corresponding learning-based detection systems. We then categorize threats specifically targeted against learning-based PDF malware detectors using a well-established framework in the field of adversarial machine learning. This framework allows us to categorize known vulnerabilities of learning-based PDF malware detectors and to identify novel attacks that may threaten such systems, along with the potential defense mechanisms that can mitigate the impact of such threats. We conclude the article by discussing how such findings highlight promising research directions towards tackling the more general challenge of designing robust malware detectors in adversarial settings.
机译:恶意软件仍然构成了网络安全景观中的主要威胁,也是由于文件诸如文件等感染载体的广泛使用。这些感染载体将嵌入式恶意代码隐藏到受害者用户,促进使用社会工程技术来感染他们的机器。研究表明,机器学习算法提供了针对这种威胁的有效的检测机制,但对抗性环境中的武器种族的存在最近挑战了这种系统。在这项工作中,我们专注于嵌入在PDF文件中的恶意软件,作为这种军备竞赛的代表性案例。我们首先提供用于生成PDF恶意软件和基于相应的基于学习的检测系统的不同方法的全面分类。然后,我们将专门针对基于学习的PDF恶意软件探测器的威胁进行分类,使用对抗机器学习领域的良好框架。该框架允许我们对基于学习的PDF恶意软件探测器的已知漏洞进行分类,并识别可能威胁这些系统的新型攻击,以及可以减轻这种威胁的影响的潜在防御机制。我们通过讨论这些发现如何突出有希望的研究方向来解决对抗对抗环境中的鲁棒恶意软件探测器的更一般挑战来结束这些研究员。

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