利用威胁知识图谱揭示 CWE-CVE-CPE 关系

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Zhenpeng Shi, Nikolay Matyunin, Kalman Graffi, David Starobinski
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引用次数: 0

摘要

安全评估依赖于有关产品、漏洞和弱点的公共信息。迄今为止,这些类别的数据库还很少进行综合分析。然而,这样做有助于预测未报告的漏洞并识别常见的威胁模式。在本文中,我们提出了一种制作和优化知识图谱的方法,该图谱汇总了来自常见威胁数据库(CVE、CWE 和 CPE)的知识。我们应用威胁知识图谱来预测威胁数据库之间的关联,特别是产品、漏洞和弱点之间的关联。我们评估了在封闭世界中利用知识图谱中的关联进行预测的性能,以及在开放世界中利用事后揭示的关联进行预测的性能。利用基于等级的指标(即平均等级、平均互易等级和 Hits@N 分数),我们展示了威胁知识图谱发现许多目前未知但将来会揭示的关联的能力,这在不同时间段仍然有用。我们提出了优化知识图谱的方法,并证明这些方法确实有助于进一步发现关联。我们公开了我们的工作成果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uncovering CWE-CVE-CPE Relations with Threat Knowledge Graphs

Security assessment relies on public information about products, vulnerabilities, and weaknesses. So far, databases in these categories have rarely been analyzed in combination. Yet, doing so could help predict unreported vulnerabilities and identify common threat patterns. In this paper, we propose a methodology for producing and optimizing a knowledge graph that aggregates knowledge from common threat databases (CVE, CWE, and CPE). We apply the threat knowledge graph to predict associations between threat databases, specifically between products, vulnerabilities, and weaknesses. We evaluate the prediction performance both in closed world with associations from the knowledge graph, and in open world with associations revealed afterward. Using rank-based metrics (i.e., Mean Rank, Mean Reciprocal Rank, and Hits@N scores), we demonstrate the ability of the threat knowledge graph to uncover many associations that are currently unknown but will be revealed in the future, which remains useful over different time periods. We propose approaches to optimize the knowledge graph, and show that they indeed help in further uncovering associations. We have made the artifacts of our work publicly available.

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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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