针对硬件缺陷的自动监督主题建模框架

Rakibul Hassan, Charan Bandi, Meng-Tien Tsai, Shahriar Golchin, Sai Manoj P D, S. Rafatirad, Soheil Salehi
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引用次数: 2

摘要

由于现代计算系统日益复杂,提交给国家漏洞数据库(NVD)的已知网络安全漏洞(cve)数量显著增加。NVD数据库是网络物理系统最新报告的易受攻击信息的重要来源。然而,如果没有适当的工具,从大量的非结构化数据中提取有用的信息来发现有意义的趋势是很麻烦的。基于此目的的先前工作主要集中在软件漏洞上,并且未能提供一个叙述框架,该框架可以提取有关CVE和Common Weakness Enumeration (CWE)数据库中随时间变化的关系和趋势的有用信息。此外,由于最近移动和物联网领域计算设备的激增,对物联网设备的硬件攻击正在迅速发展。在这项工作中,我们提出了一个基于机器学习的漏洞框架及其影响向量分类,重点关注物联网领域的硬件漏洞。我们提出的框架配备了本体驱动的讲故事框架(OSF),并以自动化的方式更新本体,旨在随着时间的推移识别类似的漏洞模式。这有助于减轻漏洞的影响,或者从另一个角度来看,预测和防止未来的暴露。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Supervised Topic Modeling Framework for Hardware Weaknesses
The number of publicly known cyber-security vulnerabilities (CVEs) submitted to the National Vulnerability Database (NVD) has increased significantly due to the increasing complexity of modern computing systems. The NVD database is a remarkable source of the latest reported vulnerable information for Cyber-Physical-System. However, it is cumbersome to extract useful information from this large corpus of unstructured data to find meaningful trends over time without the proper tools. Prior works with this purpose have mainly focused on software vulnerabilities and failed to provide a storytelling framework that can extract useful information about the relationship and trends within the CVE and Common Weakness Enumeration (CWE) databases over time. Additionally, hardware attacks on IoT devices are evolving rapidly due to the recent proliferation of computing devices in mobile and IoT domains. In this work, we present a Machine Learning-based framework for vulnerability and its impact vector classification focusing on the hardware vulnerabilities in the IoT domain. Our proposed framework is equipped with an Ontology-driven Storytelling Framework (OSF) and updates the ontology in an automated fashion, aiming to identify similar patterns of vulnerabilities over time. This helps to mitigate the impacts of vulnerabilities or, from another perspective, predicts and prevents future exposures.
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