Randomized Smoothing Meets Vision-Language Models
Paper in proceeding, 2025

Randomized smoothing (RS) is one of the prominent techniques to ensure the correctness of machine learning models, where point-wise robustness certificates can be derived analytically. While RS is well understood for classification, its application to generative models is unclear, since their outputs are sequences rather than labels. We resolve this by connecting generative outputs to an oracle classification task and showing that RS can still be enabled: the final response can be classified as a discrete action (e.g., service-robot commands in VLAs), as harmful vs. harmless (content moderation or toxicity detection in VLMs), or even applying oracles to cluster answers into semantically equivalent ones. Provided that the error rate for the oracle classifier comparison is bounded, we develop the theory that associates the number of samples with the corresponding robustness radius. We further derive improved scaling laws analytically relating the certified radius and accuracy to the number of samples, showing that the earlier result of 2 to 3 orders of magnitude fewer samples sufficing with minimal loss remains valid even under weaker assumptions. Together, these advances make robustness certification both well-defined and computationally feasible for state-of-the-art VLMs, as validated against recent jailbreak-style adversarial attacks.

randomized smoothing

vision-language model

Author

Emmanouil Seferis

National Technical University of Athens (NTUA)

Changshun Wu

Grenoble Alpes University

Stefanos Kollias

National Technical University of Athens (NTUA)

Saddek Bensalem

CSX-AI

Chih-Hong Cheng

Chalmers, Computer Science and Engineering (Chalmers), Interaction Design and Software Engineering

2025 EMNLP - 2025 Conference on Empirical Methods in Natural Language Processing


979-8-89176-332-6 (ISBN)

Empirical Methods in Natural Language Processing
Suzhou, China,

RobustifAI - Robustifying generative AI through human-centric integration of neural and symbolic methods

European Commission (EC) (101212818), 2025-06-01 -- 2028-05-31.

Subject Categories (SSIF 2025)

Computer Vision and learning System

DOI

10.18653/v1/2025.emnlp-main.1396

More information

Latest update

1/17/2026