Uncovering CWE-CVE-CPE Relations with Threat Knowledge Graphs

Author:

Shi Zhenpeng1ORCID,Matyunin Nikolay2ORCID,Graffi Kalman3ORCID,Starobinski David1ORCID

Affiliation:

1. Boston University, Boston, USA

2. Honda Research Institute Europe GmbH, Offenbach am Main, Germany

3. Technische Hochschule Bingen, Bingen, Germany

Abstract

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 article, 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.

Funder

Honda Research Institute Europe GmbH and BU Hariri Institute Research Incubation Award

Boston University Red Hat Collaboratory

US National Science Foundation

Publisher

Association for Computing Machinery (ACM)

Reference40 articles.

1. Realistic Re-evaluation of Knowledge Graph Completion Methods: An Experimental Study

2. Masaki Aota, Hideaki Kanehara, Masaki Kubo, Noboru Murata, Bo Sun, and Takeshi Takahashi. 2020. Automation of vulnerability classification from its description using machine learning. In IEEE Symposium on Computers and Communications (ISCC’20). IEEE, 1–7.

3. V-SZZ

4. Translating embeddings for modeling multi-relational data;Bordes Antoine;Adv. Neural Inf. Process. Syst.,2013

5. Identifying vulnerable third-party libraries from textual descriptions of vulnerabilities and libraries;Chen Tianyu;arXiv preprint arXiv:2307.08206,2023

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