Back to Search Start Over

HW-V2W-Map: Hardware Vulnerability to Weakness Mapping Framework for Root Cause Analysis with GPT-assisted Mitigation Suggestion

Authors :
Lin, Yu-Zheng
Mamun, Muntasir
Chowdhury, Muhtasim Alam
Cai, Shuyu
Zhu, Mingyu
Latibari, Banafsheh Saber
Gubbi, Kevin Immanuel
Bavarsad, Najmeh Nazari
Caputo, Arjun
Sasan, Avesta
Homayoun, Houman
Rafatirad, Setareh
Satam, Pratik
Salehi, Soheil
Publication Year :
2023

Abstract

The escalating complexity of modern computing frameworks has resulted in a surge in the cybersecurity vulnerabilities reported to the National Vulnerability Database (NVD) by practitioners. Despite the fact that the stature of NVD is one of the most significant databases for the latest insights into vulnerabilities, extracting meaningful trends from such a large amount of unstructured data is still challenging without the application of suitable technological methodologies. Previous efforts have mostly concentrated on software vulnerabilities; however, a holistic strategy incorporates approaches for mitigating vulnerabilities, score prediction, and a knowledge-generating system that may extract relevant insights from the Common Weakness Enumeration (CWE) and Common Vulnerability Exchange (CVE) databases is notably absent. As the number of hardware attacks on Internet of Things (IoT) devices continues to rapidly increase, we present the Hardware Vulnerability to Weakness Mapping (HW-V2W-Map) Framework, which is a Machine Learning (ML) framework focusing on hardware vulnerabilities and IoT security. The architecture that we have proposed incorporates an Ontology-driven Storytelling framework, which automates the process of updating the ontology in order to recognize patterns and evolution of vulnerabilities over time and provides approaches for mitigating the vulnerabilities. The repercussions of vulnerabilities can be mitigated as a result of this, and conversely, future exposures can be predicted and prevented. Furthermore, our proposed framework utilized Generative Pre-trained Transformer (GPT) Large Language Models (LLMs) to provide mitigation suggestions.<br />Comment: 22 pages, 10 pages appendix, 10 figures, Submitted to ACM TODAES

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2312.13530
Document Type :
Working Paper