通过大规模URL->文件->机器图挖掘实时检测恶意软件下载

Babak Rahbarinia, Marco Balduzzi, R. Perdisci
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引用次数: 29

摘要

本文提出了一种检测恶意软件下载事件的新型防御系统Mastino。下载事件是一个3元组,用于标识由客户机(机器)触发的从URL下载文件的操作。Mastino利用全局态势感知,并通过Internet持续监控客户端机器的各种网络和系统级事件,并在向系统提交新的未知文件或URL时向客户端提供文件和URL的实时分类。为了检测下载事件,Mastino构建了一个大型下载图,它捕获了下载事件实体(即文件、url和机器)之间的微妙关系。我们实现了Mastino的原型版本,并在大规模的实际部署中对其进行了评估。我们的实验评估表明,Mastino可以准确地对恶意软件下载事件进行分类,平均真阳性(TP)为95.5%,而假阳性(FP)低于0.5%。此外,我们还展示了Mastino可以在不到一秒的时间内将新的下载事件分类为良性或恶意软件,因此适合作为实时防御系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Detection of Malware Downloads via Large-Scale URL->File->Machine Graph Mining
In this paper we propose Mastino, a novel defense system to detect malware download events. A download event is a 3-tuple that identifies the action of downloading a file from a URL that was triggered by a client (machine). Mastino utilizes global situation awareness and continuously monitors various network- and system-level events of the clients' machines across the Internet and provides real time classification of both files and URLs to the clients upon submission of a new, unknown file or URL to the system. To enable detection of the download events, Mastino builds a large download graph that captures the subtle relationships among the entities of download events, i.e. files, URLs, and machines. We implemented a prototype version of Mastino and evaluated it in a large-scale real-world deployment. Our experimental evaluation shows that Mastino can accurately classify malware download events with an average of 95.5% true positive (TP), while incurring less than 0.5% false positives (FP). In addition, we show the Mastino can classify a new download event as either benign or malware in just a fraction of a second, and is therefore suitable as a real time defense system.
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