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DynaMiner: Leveraging Offline Infection Analytics for On-the-Wire Malware Detection

机译:DynaMiner:利用离线感染分析进行在线恶意软件检测

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Web-borne malware continues to be a major threat on the Web. At the core of malware infection are for-crime toolkits that exploit vulnerabilities in browsers and their extensions. When a victim host gets infected, the infection dynamics is often buried in benign traffic, which makes the task of inferring malicious behavior a non-trivial exercise. In this paper, we leverage web conversation graph analytics to tap into the rich dynamics of the interaction between a victim and malicious host(s) without the need for analyzing exploit payload. Based on insights derived from infection graph analytics, we formulate the malware detection challenge as a graph-analytics based learning problem. The key insight of our approach is the payload-agnostic abstraction and comprehensive analytics of malware infection dynamics pre-, during-, and post-infection. Our technique leverages 3 years of infection intelligence spanning 9 popular exploit kit families. Our approach is implemented in a tool called DynaMiner and evaluated on infection and benign HTTP traffic. DynaMiner achieves a 97.3% true positive rate with false positive rate of 1.5%. Our forensic and live case studies suggest the effectiveness of comprehensive graph abstraction malware infection. In some instances, DynaMiner detected unknown malware 11 days earlier than existing AV engines.
机译:网络传播的恶意软件仍然是网络上的主要威胁。恶意软件感染的核心是利用犯罪行为的工具包,这些工具包利用浏览器及其扩展程序中的漏洞。当受害者宿主被感染时,感染动态通常隐藏在良性流量中,这使得推断恶意行为的任务变得不容易。在本文中,我们利用Web对话图分析来利用受害者与恶意主机之间的交互的丰富动态,而无需分析利用有效载荷。基于从感染图分析得出的见解,我们将恶意软件检测挑战表述为基于图分析的学习问题。我们的方法的关键见解是感染前,感染中和感染后与负载无关的抽象以及对恶意软件感染动态的全面分析。我们的技术利用了涵盖9个流行漏洞利用工具家族的3年感染情报。我们的方法在名为DynaMiner的工具中实施,并针对感染和良性HTTP流量进行了评估。 DynaMiner实现了97.3%的真实阳性率和1.5%的假阳性率。我们的法医和现场案例研究表明,综合图抽象恶意软件感染的有效性。在某些情况下,DynaMiner比现有的AV引擎提前11天检测到未知恶意软件。

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