Detecting malicious landing pages in Malware Distribution Networks

G. Wang, J. W. Stokes, Cormac Herley, D. Felstead
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引用次数: 34

Abstract

Drive-by download attacks attempt to compromise a victim's computer through browser vulnerabilities. Often they are launched from Malware Distribution Networks (MDNs) consisting of landing pages to attract traffic, intermediate redirection servers, and exploit servers which attempt the compromise. In this paper, we present a novel approach to discovering the landing pages that lead to drive-by downloads. Starting from partial knowledge of a given collection of MDNs we identify the malicious content on their landing pages using multiclass feature selection. We then query the webpage cache of a commercial search engine to identify landing pages containing the same or similar content. In this way we are able to identify previously unknown landing pages belonging to already identified MDNs, which allows us to expand our understanding of the MDN. We explore using both a rule-based and classifier approach to identifying potentially malicious landing pages. We build both systems and independently verify using a high-interaction honeypot that the newly identified landing pages indeed attempt drive-by downloads. For the rule-based system 57% of the landing pages predicted as malicious are confirmed, and this success rate remains constant in two large trials spaced five months apart. This extends the known footprint of the MDNs studied by 17%. The classifier-based system is less successful, and we explore possible reasons.
检测恶意软件分发网络中的恶意着陆页
飞车下载攻击试图通过浏览器漏洞破坏受害者的计算机。通常,它们是从恶意软件分发网络(mdn)发起的,该网络由吸引流量的着陆页面、中间重定向服务器和企图妥协的漏洞服务器组成。在本文中,我们提出了一种新的方法来发现导致驱动下载的登陆页面。从给定mdn集合的部分知识开始,我们使用多类特征选择识别其着陆页面上的恶意内容。然后,我们查询一个商业搜索引擎的网页缓存,以确定包含相同或类似内容的登陆页面。通过这种方式,我们能够识别属于已经确定的MDN的以前未知的着陆页,这使我们能够扩展我们对MDN的理解。我们探索使用基于规则和分类器的方法来识别潜在的恶意着陆页面。我们构建了这两个系统,并使用高交互蜜罐独立验证新识别的登陆页面确实试图通过下载。对于基于规则的系统,57%被预测为恶意的登陆页面被确认,并且在相隔五个月的两次大型试验中,这一成功率保持不变。这将所研究的mdn的已知足迹扩展了17%。基于分类器的系统不太成功,我们探讨了可能的原因。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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