Matías Mazzanti, Esteban Mocskos, et al.
ISCA 2025
Despite the impressive adaptability of large language models (LLMs), challenges remain in ensuring their security, transparency, and interpretability. Given their susceptibility to adversarial attacks, LLMs need to be defended with an evolving combination of adversarial training and guardrails. However, managing the implicit and heterogeneous knowledge for continuously assuring robustness is difficult. We introduce a novel approach for assurance of the adversarial robustness of LLMs based on formal argumentation. Using ontologies for formalization, we structure state-of-the-art attacks and defenses, facilitating the creation of a human-readable assurance case, and a machine-readable representation. We demonstrate its application with examples in English language and code translation tasks, and provide implications for theory and practice, by targeting engineers, data scientists, users, and auditors.
Matías Mazzanti, Esteban Mocskos, et al.
ISCA 2025
Zhiyuan He, Yijun Yang, et al.
ICML 2024
Teryl Taylor, Frederico Araujo, et al.
Big Data 2020
Giulio Zizzo, Ambrish Rawat, et al.
NeurIPS 2022