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Autores principales: Gabrielli, Davide, Sestito, Simone, Masi, Iacopo
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2510.01929
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author Gabrielli, Davide
Sestito, Simone
Masi, Iacopo
author_facet Gabrielli, Davide
Sestito, Simone
Masi, Iacopo
contents The current landscape of defensive mechanisms for LLMs is fragmented and underdeveloped, unlike prior work on classifiers. To further promote adversarial robustness in LLMs, we propose Inverse Language Modeling (ILM), a unified framework that simultaneously 1) improves the robustness of LLMs to input perturbations, and, at the same time, 2) enables native grounding by inverting model outputs to identify potentially toxic or unsafe input triggers. ILM transforms LLMs from static generators into analyzable and robust systems, potentially helping RED teaming. ILM can lay the foundation for next-generation LLMs that are not only robust and grounded but also fundamentally more controllable and trustworthy. The code is publicly available at github.com/davegabe/pag-llm.
format Preprint
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institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Inverse Language Modeling towards Robust and Grounded LLMs
Gabrielli, Davide
Sestito, Simone
Masi, Iacopo
Computation and Language
The current landscape of defensive mechanisms for LLMs is fragmented and underdeveloped, unlike prior work on classifiers. To further promote adversarial robustness in LLMs, we propose Inverse Language Modeling (ILM), a unified framework that simultaneously 1) improves the robustness of LLMs to input perturbations, and, at the same time, 2) enables native grounding by inverting model outputs to identify potentially toxic or unsafe input triggers. ILM transforms LLMs from static generators into analyzable and robust systems, potentially helping RED teaming. ILM can lay the foundation for next-generation LLMs that are not only robust and grounded but also fundamentally more controllable and trustworthy. The code is publicly available at github.com/davegabe/pag-llm.
title Inverse Language Modeling towards Robust and Grounded LLMs
topic Computation and Language
url https://arxiv.org/abs/2510.01929