NO-DOUBT: Attack Attribution Based On Threat Intelligence Reports

Lior Perry, Bracha Shapira, Rami Puzis
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引用次数: 13

Abstract

The task of attack attribution, i.e., identifying the entity responsible for an attack, is complicated and usually requires the involvement of an experienced security expert. Prior attempts to automate attack attribution apply various machine learning techniques on features extracted from the malware’s code and behavior in order to identify other similar malware whose authors are known. However, the same malware can be reused by multiple actors, and the actor who performed an attack using a malware might differ from the malware’s author. Moreover, information collected during an incident may contain many clues about the identity of the attacker in addition to the malware used. In this paper, we propose a method of attack attribution based on textual analysis of threat intelligence reports, using state of the art algorithms and models from the fields of machine learning and natural language processing (NLP). We have developed a new text representation algorithm which captures the context of the words and requires minimal feature engineering. Our approach relies on vector space representation of incident reports derived from a small collection of labeled reports and a large corpus of general security literature. Both datasets have been made available to the research community. Experimental results show that the proposed representation can attribute attacks more accurately than the baselines’ representations. In addition, we show how the proposed approach can be used to identify novel previously unseen threat actors and identify similarities between known threat actors.
毫无疑问:攻击归因基于威胁情报报告
攻击归因的任务,即识别负责攻击的实体,是复杂的,通常需要有经验的安全专家的参与。之前的攻击归因自动化尝试采用各种机器学习技术,从恶意软件的代码和行为中提取特征,以识别其他已知作者的类似恶意软件。然而,相同的恶意软件可以被多个参与者重用,并且使用恶意软件执行攻击的参与者可能与恶意软件的作者不同。此外,在事件期间收集的信息除了所使用的恶意软件之外,还可能包含许多关于攻击者身份的线索。在本文中,我们提出了一种基于威胁情报报告文本分析的攻击归因方法,使用了机器学习和自然语言处理(NLP)领域的最新算法和模型。我们开发了一种新的文本表示算法,它可以捕获单词的上下文,并且需要最小的特征工程。我们的方法依赖于事件报告的向量空间表示,这些事件报告来自一小部分标记报告和大量通用安全文献。这两个数据集已经提供给研究界。实验结果表明,所提表征比基线表征能更准确地描述攻击属性。此外,我们还展示了如何使用所提出的方法来识别以前未见过的新威胁参与者,并识别已知威胁参与者之间的相似性。
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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