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Detective: Automatically identify and analyze malware processes in forensic scenarios via DLLs

机译:侦探:通过DLL自动识别和分析法医场景中的恶意软件进程

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Current memory forensic methods mainly focus on evidence collection and data recovery. A little work is about how to automatically identify malwares from many unknown processes and analyze their behaviors in high semantic level so as to collect related evidences. In fact, in real cases, investigators are often faced with large number of processes that they have no knowledge of. Although current malware detection tools could provide some help, they usually can't illustrate the purposes, abilities and behavior details of malwares and are thus often not fit for the forensic requirements. In this paper, we present a framework named Detective to cope with these issues. Given a set of unknown processes, Detective can classify benign and malware processes automatically. This is implemented by HNB classifying algorithm and a Dynamic-Link Libraries-based model. Detective could then explain malware behaviors in high semantic level through clustering and frequent item sets mining techniques. Besides, Detective sheds light on evidence collection by the information obtained from previous steps. Detective is applicable for both online and offline forensic scenarios. Experiments on real-world malware set have proved that the accuracy of Detective is above 90% and the time cost is only several seconds.
机译:当前的存储器取证方法主要集中在证据收集和数据恢复上。关于如何自动从许多未知进程中识别恶意软件并以较高的语义级别分析其行为以收集相关证据的工作很少。实际上,在实际情况下,研究人员经常面临许多他们所不了解的过程。尽管当前的恶意软件检测工具可以提供一些帮助,但它们通常无法说明恶意软件的目的,能力和行为细节,因此通常不适合法医要求。在本文中,我们提出了一个名为Detective的框架来应对这些问题。给定一组未知进程,Detective可以自动对良性和恶意软件进程进行分类。这是通过HNB分类算法和基于动态链接库的模型来实现的。然后,侦探人员可以通过聚类和频繁项集挖掘技术以较高的语义级别解释恶意软件的行为。此外,侦探还通过先前步骤获得的信息阐明了证据的收集。侦探适用于在线和离线法医场景。在真实世界的恶意软件集上进行的实验证明,“侦探”的准确性可达到90%以上,时间成本仅为几秒钟。

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