Cream Skimming the Underground: Identifying Relevant Information Points from Online Forums

Felipe Moreno Vera, M. Nogueira, Cainã Figueiredo, D. S. Menasch'e, Miguel Bicudo, Ashton Woiwood, Enrico Lovat, Anton Kocheturov, L. P. D. Aguiar
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Abstract

This paper proposes a machine learning-based approach for detecting the exploitation of vulnerabilities in the wild by monitoring underground hacking forums. The increasing volume of posts discussing exploitation in the wild calls for an automatic approach to process threads and posts that will eventually trigger alarms depending on their content. To illustrate the proposed system, we use the CrimeBB dataset, which contains data scraped from multiple underground forums, and develop a supervised machine learning model that can filter threads citing CVEs and label them as Proof-of-Concept, Weaponization, or Exploitation. Leveraging random forests, we indicate that accuracy, precision and recall above 0.99 are attainable for the classification task. Additionally, we provide insights into the difference in nature between weaponization and exploitation, e.g., interpreting the output of a decision tree, and analyze the profits and other aspects related to the hacking communities. Overall, our work sheds insight into the exploitation of vulnerabilities in the wild and can be used to provide additional ground truth to models such as EPSS and Expected Exploitability.
奶油浏览地下:识别相关信息点从网上论坛
本文提出了一种基于机器学习的方法,通过监控地下黑客论坛来检测野外漏洞的利用。讨论开发的帖子越来越多,因此需要一种自动处理线程和帖子的方法,这些线程和帖子最终会根据其内容触发警报。为了说明所提出的系统,我们使用CrimeBB数据集,其中包含从多个地下论坛抓取的数据,并开发了一个有监督的机器学习模型,该模型可以过滤引用cve的线程,并将其标记为概念验证、武器化或利用。利用随机森林,我们表明对于分类任务,准确率、精密度和召回率都可以达到0.99以上。此外,我们还提供了对武器化和利用之间本质差异的见解,例如,解释决策树的输出,并分析与黑客社区相关的利润和其他方面。总的来说,我们的工作揭示了对野外漏洞的利用,并可用于为EPSS和预期利用等模型提供额外的基础事实。
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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