On the Validity of Traditional Vulnerability Scoring Systems for Adversarial Attacks against LLMs
Atmane Ayoub Mansour Bahar, Ahmad Samer Wazan

TL;DR
This paper critically evaluates the effectiveness of traditional vulnerability scoring systems like CVSS in assessing adversarial attacks on large language models, revealing their limitations and the need for more adaptable metrics.
Contribution
It provides a quantitative analysis demonstrating the inadequacy of existing vulnerability metrics for LLM adversarial attacks and suggests directions for developing improved assessment tools.
Findings
Vulnerability scores show minimal variation across different attacks.
Existing metrics are inadequate for context-specific factors.
Rigid metric values limit accurate vulnerability assessment.
Abstract
This research investigates the effectiveness of established vulnerability metrics, such as the Common Vulnerability Scoring System (CVSS), in evaluating attacks against Large Language Models (LLMs), with a focus on Adversarial Attacks (AAs). The study explores the influence of both general and specific metric factors in determining vulnerability scores, providing new perspectives on potential enhancements to these metrics. This study adopts a quantitative approach, calculating and comparing the coefficient of variation of vulnerability scores across 56 adversarial attacks on LLMs. The attacks, sourced from various research papers, and obtained through online databases, were evaluated using multiple vulnerability metrics. Scores were determined by averaging the values assessed by three distinct LLMs. The results indicate that existing scoring-systems yield vulnerability scores with…
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Taxonomy
TopicsInformation and Cyber Security
MethodsSoftmax · Attention Is All You Need · Focus
