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Malware Triage Based on Static Features and Public APT Reports

机译:基于静态功能和公共APT报告的恶意软件分类

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摘要

Understanding the behavior of malware requires a semiautomatic approach including complex software tools and human analysts in the loop. However, the huge number of malicious samples developed daily calls for some prioritization mechanism to carefully select the samples that really deserve to be further examined by analysts. This avoids computational resources be overloaded and human analysts saturated. In this paper we introduce a malware triage stage where samples are quickly and automatically examined to promptly decide whether they should be immediately dispatched to human analysts or to other specific automatic analysis queues, rather than following the common and slow analysis pipeline. Such triage stage is encapsulated into an architecture for semi-automatic malware analysis presented in a previous work. In this paper we propose an approach for sample prioritization, and its realization within such architecture. Our analysis in the paper focuses on malware developed by Advanced Persistent Threats (APTs). We build our knowledge base, used in the triage, on known APTs obtained from publicly available reports. To make the triage as fast as possible, only static malware features are considered, which can be extracted with negligible delay, without the necessity of executing the malware samples, and we use them to train a random forest classifier. The classifier has been tuned to maximize its precision, so that analysts and other components of the architecture are mostly likely to receive only malware correctly identified as being similar to known APT, and do not waste important resources on false positives. A preliminary analysis shows high precision and accuracy, as desired.
机译:了解恶意软件的行为需要一种半自动方法,其中包括复杂的软件工具和处于循环中的人工分析人员。但是,每天都会产生大量的恶意样本,因此需要某种优先级划分机制来仔细选择确实值得分析人员进一步检查的样本。这避免了计算资源的过载和人工分析人员的饱和。在本文中,我们介绍了一个恶意软件分类阶段,在该阶段中,可以快速自动地检查样本,以迅速决定是否应立即将其分发给人工分析人员或其他特定的自动分析队列,而不必遵循常见而缓慢的分析流程。这种分流阶段被封装到先前工作中介绍的用于半自动恶意软件分析的体系结构中。在本文中,我们提出了一种用于样本优先级排序的方法,以及在这种架构中的实现方法。我们在本文中的分析重点是由高级持久威胁(APT)开发的恶意软件。我们基于从公开报告中获得的已知APT建立我们的知识库,以供分类中使用。为了尽可能快地进行分类,仅考虑静态恶意软件功能,可以以可忽略的延迟提取它们,而无需执行恶意软件样本,我们使用它们来训练随机森林分类器。分类器已经过调整,可以最大程度地提高其准确性,因此分析人员和体系结构的其他组件很可能只接收正确识别为与已知APT类似的恶意软件,而不会浪费大量的假阳性资源。初步分析显示了所需的高精度和准确性。

著录项

  • 来源
  • 会议地点 Beer-Sheva(IL)
  • 作者单位

    Department of Computer and System Sciences "Antonio Ruberti", Research Center of Cyber Intelligence and Information Security (CIS), Sapienza Università di Roma, Rome, Italy;

    Department of Computer and System Sciences "Antonio Ruberti", Research Center of Cyber Intelligence and Information Security (CIS), Sapienza Università di Roma, Rome, Italy;

    Department of Computer and System Sciences "Antonio Ruberti", Research Center of Cyber Intelligence and Information Security (CIS), Sapienza Università di Roma, Rome, Italy;

    Department of Computer and System Sciences "Antonio Ruberti", Research Center of Cyber Intelligence and Information Security (CIS), Sapienza Università di Roma, Rome, Italy,CINI Cybersecurity National Laboratory, Rome, Italy;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Malware analysis; Advanced Persistent Threats; Static analysis; Malware triage;

    机译:恶意软件分析;高级持续威胁;静态分析;恶意软件分类;

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