Toward Smarter Vulnerability Discovery Using Machine Learning

Gustavo Grieco, Artem Dinaburg
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引用次数: 7

Abstract

A Cyber Reasoning System (CRS) is designed to automatically find and exploit software vulnerabilities in complex software. To be effective, CRSs integrate multiple vulnerability detection tools (VDTs), such as symbolic executors and fuzzers. Determining which VDTs can best find bugs in a large set of target programs, and how to optimally configure those VDTs, remains an open and challenging problem. Current solutions are based on heuristics created by security analysts that rely on experience, intuition and luck. In this paper, we present Central Exploit Organizer (CEO), a proof-of-concept tool to optimize VDT selection. CEO uses machine learning to optimize the selection and configuration of the most suitable vulnerability detection tool. We show that CEO can predict the relative effectiveness of a given vulnerability detection tool, configuration, and initial input. The estimation accuracy presents an improvement between $11%$ and $21%$ over random selection. We are releasing CEO and our dataset as open source to encourage further research.
使用机器学习实现更智能的漏洞发现
网络推理系统(Cyber Reasoning System, CRS)旨在自动发现和利用复杂软件中的软件漏洞。为了提高安全性,crs集成了多个漏洞检测工具(vdt),如符号执行器和模糊器。确定哪些vdt可以最好地找到大量目标程序中的错误,以及如何优化配置这些vdt,仍然是一个开放和具有挑战性的问题。目前的解决方案是基于证券分析师根据经验、直觉和运气创造的启发式方法。在本文中,我们提出了中央开发组织者(CEO),一个优化VDT选择的概念验证工具。CEO利用机器学习优化选择和配置最合适的漏洞检测工具。我们表明,CEO可以预测给定漏洞检测工具、配置和初始输入的相对有效性。与随机选择相比,估计精度提高了11% ~ 21%。我们将CEO和我们的数据集作为开源发布,以鼓励进一步的研究。
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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